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												<ml:mult style="default"/>
												<ml:real>2</ml:real>
												<ml:id xml:space="preserve">π</ml:id>
											</ml:apply>
											<ml:id xml:space="preserve">f</ml:id>
										</ml:apply>
										<ml:id xml:space="preserve">L2</ml:id>
									</ml:apply>
									<ml:imag symbol="i">1</ml:imag>
								</ml:apply>
								<ml:apply>
									<ml:mult style="default"/>
									<ml:apply>
										<ml:mult style="default"/>
										<ml:apply>
											<ml:mult style="default"/>
											<ml:real>2</ml:real>
											<ml:id xml:space="preserve">π</ml:id>
										</ml:apply>
										<ml:id xml:space="preserve">f</ml:id>
									</ml:apply>
									<ml:apply>
										<ml:div/>
										<ml:id xml:space="preserve">L2</ml:id>
										<ml:id xml:space="preserve">Q</ml:id>
									</ml:apply>
								</ml:apply>
							</ml:apply>
						</ml:define>
					</math>
				</region>
				<region region-id="98" left="492" top="146" width="156.5" height="26" align-x="526" align-y="161.5" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag="">
					<math optimize="false" disable-calc="false">
						<ml:define xmlns:ml="http://schemas.mathsoft.com/math20">
							<ml:function>
								<ml:id xml:space="preserve">xL3</ml:id>
								<ml:boundVars>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:boundVars>
							</ml:function>
							<ml:apply>
								<ml:plus/>
								<ml:apply>
									<ml:mult style="default"/>
									<ml:apply>
										<ml:mult style="default"/>
										<ml:apply>
											<ml:mult style="default"/>
											<ml:apply>
												<ml:mult style="default"/>
												<ml:real>2</ml:real>
												<ml:id xml:space="preserve">π</ml:id>
											</ml:apply>
											<ml:id xml:space="preserve">f</ml:id>
										</ml:apply>
										<ml:id xml:space="preserve">L3</ml:id>
									</ml:apply>
									<ml:imag symbol="i">1</ml:imag>
								</ml:apply>
								<ml:apply>
									<ml:mult style="default"/>
									<ml:apply>
										<ml:mult style="default"/>
										<ml:apply>
											<ml:mult style="default"/>
											<ml:real>2</ml:real>
											<ml:id xml:space="preserve">π</ml:id>
										</ml:apply>
										<ml:id xml:space="preserve">f</ml:id>
									</ml:apply>
									<ml:apply>
										<ml:div/>
										<ml:id xml:space="preserve">L3</ml:id>
										<ml:id xml:space="preserve">Q</ml:id>
									</ml:apply>
								</ml:apply>
							</ml:apply>
						</ml:define>
					</math>
				</region>
				<region region-id="32" left="36" top="152" width="156.5" height="26" align-x="70" align-y="167.5" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag="">
					<math optimize="false" disable-calc="false">
						<ml:define xmlns:ml="http://schemas.mathsoft.com/math20">
							<ml:function>
								<ml:id xml:space="preserve">xL1</ml:id>
								<ml:boundVars>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:boundVars>
							</ml:function>
							<ml:apply>
								<ml:plus/>
								<ml:apply>
									<ml:mult style="default"/>
									<ml:apply>
										<ml:mult style="default"/>
										<ml:apply>
											<ml:mult style="default"/>
											<ml:apply>
												<ml:mult style="default"/>
												<ml:real>2</ml:real>
												<ml:id xml:space="preserve">π</ml:id>
											</ml:apply>
											<ml:id xml:space="preserve">f</ml:id>
										</ml:apply>
										<ml:id xml:space="preserve">L1</ml:id>
									</ml:apply>
									<ml:imag symbol="i">1</ml:imag>
								</ml:apply>
								<ml:apply>
									<ml:mult style="default"/>
									<ml:apply>
										<ml:mult style="default"/>
										<ml:apply>
											<ml:mult style="default"/>
											<ml:real>2</ml:real>
											<ml:id xml:space="preserve">π</ml:id>
										</ml:apply>
										<ml:id xml:space="preserve">f</ml:id>
									</ml:apply>
									<ml:apply>
										<ml:div/>
										<ml:id xml:space="preserve">L1</ml:id>
										<ml:id xml:space="preserve">Q</ml:id>
									</ml:apply>
								</ml:apply>
							</ml:apply>
						</ml:define>
					</math>
				</region>
				<region region-id="141" left="420" top="195.5" width="92.5" height="32" align-x="455" align-y="215.5" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag="">
					<math optimize="false" disable-calc="false">
						<ml:define xmlns:ml="http://schemas.mathsoft.com/math20">
							<ml:function>
								<ml:id xml:space="preserve">xC3</ml:id>
								<ml:boundVars>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:boundVars>
							</ml:function>
							<ml:apply>
								<ml:div/>
								<ml:apply>
									<ml:mult style="default"/>
									<ml:imag symbol="i">-1</ml:imag>
									<ml:apply>
										<ml:pow/>
										<ml:real>10</ml:real>
										<ml:real>6</ml:real>
									</ml:apply>
								</ml:apply>
								<ml:apply>
									<ml:mult style="default"/>
									<ml:apply>
										<ml:mult style="default"/>
										<ml:apply>
											<ml:mult style="default"/>
											<ml:real>2</ml:real>
											<ml:id xml:space="preserve">π</ml:id>
										</ml:apply>
										<ml:id xml:space="preserve">f</ml:id>
									</ml:apply>
									<ml:id xml:space="preserve">C3</ml:id>
								</ml:apply>
							</ml:apply>
						</ml:define>
					</math>
				</region>
				<region region-id="35" left="36" top="201.5" width="92.5" height="32" align-x="71" align-y="221.5" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag="">
					<math optimize="false" disable-calc="false">
						<ml:define xmlns:ml="http://schemas.mathsoft.com/math20">
							<ml:function>
								<ml:id xml:space="preserve">xC1</ml:id>
								<ml:boundVars>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:boundVars>
							</ml:function>
							<ml:apply>
								<ml:div/>
								<ml:apply>
									<ml:mult style="default"/>
									<ml:imag symbol="i">-1</ml:imag>
									<ml:apply>
										<ml:pow/>
										<ml:real>10</ml:real>
										<ml:real>6</ml:real>
									</ml:apply>
								</ml:apply>
								<ml:apply>
									<ml:mult style="default"/>
									<ml:apply>
										<ml:mult style="default"/>
										<ml:apply>
											<ml:mult style="default"/>
											<ml:real>2</ml:real>
											<ml:id xml:space="preserve">π</ml:id>
										</ml:apply>
										<ml:id xml:space="preserve">f</ml:id>
									</ml:apply>
									<ml:id xml:space="preserve">C1</ml:id>
								</ml:apply>
							</ml:apply>
						</ml:define>
					</math>
				</region>
				<region region-id="38" left="258" top="201.5" width="92.5" height="32" align-x="293" align-y="221.5" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag="">
					<math optimize="false" disable-calc="false">
						<ml:define xmlns:ml="http://schemas.mathsoft.com/math20">
							<ml:function>
								<ml:id xml:space="preserve">xC2</ml:id>
								<ml:boundVars>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:boundVars>
							</ml:function>
							<ml:apply>
								<ml:div/>
								<ml:apply>
									<ml:mult style="default"/>
									<ml:imag symbol="i">-1</ml:imag>
									<ml:apply>
										<ml:pow/>
										<ml:real>10</ml:real>
										<ml:real>6</ml:real>
									</ml:apply>
								</ml:apply>
								<ml:apply>
									<ml:mult style="default"/>
									<ml:apply>
										<ml:mult style="default"/>
										<ml:apply>
											<ml:mult style="default"/>
											<ml:real>2</ml:real>
											<ml:id xml:space="preserve">π</ml:id>
										</ml:apply>
										<ml:id xml:space="preserve">f</ml:id>
									</ml:apply>
									<ml:id xml:space="preserve">C2</ml:id>
								</ml:apply>
							</ml:apply>
						</ml:define>
					</math>
				</region>
				<region region-id="39" left="42" top="278" width="105" height="26" align-x="70" align-y="293.5" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag="">
					<math optimize="false" disable-calc="false">
						<ml:define xmlns:ml="http://schemas.mathsoft.com/math20">
							<ml:function>
								<ml:id xml:space="preserve">z1</ml:id>
								<ml:boundVars>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:boundVars>
							</ml:function>
							<ml:apply>
								<ml:mult style="default"/>
								<ml:real>50</ml:real>
								<ml:apply>
									<ml:div/>
									<ml:apply>
										<ml:id xml:space="preserve">xC1</ml:id>
										<ml:id xml:space="preserve">f</ml:id>
									</ml:apply>
									<ml:apply>
										<ml:plus/>
										<ml:real>50</ml:real>
										<ml:apply>
											<ml:id xml:space="preserve">xC1</ml:id>
											<ml:id xml:space="preserve">f</ml:id>
										</ml:apply>
									</ml:apply>
								</ml:apply>
							</ml:apply>
						</ml:define>
					</math>
				</region>
				<region region-id="41" left="48" top="327" width="94.5" height="12" align-x="76" align-y="335.5" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag="">
					<math optimize="false" disable-calc="false">
						<ml:define xmlns:ml="http://schemas.mathsoft.com/math20">
							<ml:function>
								<ml:id xml:space="preserve">z2</ml:id>
								<ml:boundVars>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:boundVars>
							</ml:function>
							<ml:apply>
								<ml:plus/>
								<ml:apply>
									<ml:id xml:space="preserve">xL3</ml:id>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:apply>
								<ml:apply>
									<ml:id xml:space="preserve">z1</ml:id>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:apply>
							</ml:apply>
						</ml:define>
					</math>
				</region>
				<region region-id="44" left="48" top="362" width="126" height="26" align-x="76" align-y="377.5" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag="">
					<math optimize="false" disable-calc="false">
						<ml:define xmlns:ml="http://schemas.mathsoft.com/math20">
							<ml:function>
								<ml:id xml:space="preserve">z3</ml:id>
								<ml:boundVars>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:boundVars>
							</ml:function>
							<ml:apply>
								<ml:mult style="default"/>
								<ml:apply>
									<ml:id xml:space="preserve">z2</ml:id>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:apply>
								<ml:apply>
									<ml:div/>
									<ml:apply>
										<ml:id xml:space="preserve">xC2</ml:id>
										<ml:id xml:space="preserve">f</ml:id>
									</ml:apply>
									<ml:apply>
										<ml:plus/>
										<ml:apply>
											<ml:id xml:space="preserve">z2</ml:id>
											<ml:id xml:space="preserve">f</ml:id>
										</ml:apply>
										<ml:apply>
											<ml:id xml:space="preserve">xC2</ml:id>
											<ml:id xml:space="preserve">f</ml:id>
										</ml:apply>
									</ml:apply>
								</ml:apply>
							</ml:apply>
						</ml:define>
					</math>
				</region>
				<region region-id="45" left="48" top="410" width="169.5" height="26" align-x="76" align-y="425.5" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag="">
					<math optimize="false" disable-calc="false">
						<ml:define xmlns:ml="http://schemas.mathsoft.com/math20">
							<ml:function>
								<ml:id xml:space="preserve">z4</ml:id>
								<ml:boundVars>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:boundVars>
							</ml:function>
							<ml:apply>
								<ml:plus/>
								<ml:apply>
									<ml:mult style="default"/>
									<ml:apply>
										<ml:id xml:space="preserve">xL2</ml:id>
										<ml:id xml:space="preserve">f</ml:id>
									</ml:apply>
									<ml:apply>
										<ml:div/>
										<ml:apply>
											<ml:id xml:space="preserve">xC3</ml:id>
											<ml:id xml:space="preserve">f</ml:id>
										</ml:apply>
										<ml:apply>
											<ml:plus/>
											<ml:apply>
												<ml:id xml:space="preserve">xC3</ml:id>
												<ml:id xml:space="preserve">f</ml:id>
											</ml:apply>
											<ml:apply>
												<ml:id xml:space="preserve">xL2</ml:id>
												<ml:id xml:space="preserve">f</ml:id>
											</ml:apply>
										</ml:apply>
									</ml:apply>
								</ml:apply>
								<ml:apply>
									<ml:id xml:space="preserve">z3</ml:id>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:apply>
							</ml:apply>
						</ml:define>
					</math>
				</region>
				<region region-id="101" left="48" top="446" width="126" height="26" align-x="76" align-y="461.5" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag="">
					<math optimize="false" disable-calc="false">
						<ml:define xmlns:ml="http://schemas.mathsoft.com/math20">
							<ml:function>
								<ml:id xml:space="preserve">z5</ml:id>
								<ml:boundVars>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:boundVars>
							</ml:function>
							<ml:apply>
								<ml:mult style="default"/>
								<ml:apply>
									<ml:id xml:space="preserve">z4</ml:id>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:apply>
								<ml:apply>
									<ml:div/>
									<ml:apply>
										<ml:id xml:space="preserve">xC2</ml:id>
										<ml:id xml:space="preserve">f</ml:id>
									</ml:apply>
									<ml:apply>
										<ml:plus/>
										<ml:apply>
											<ml:id xml:space="preserve">z4</ml:id>
											<ml:id xml:space="preserve">f</ml:id>
										</ml:apply>
										<ml:apply>
											<ml:id xml:space="preserve">xC2</ml:id>
											<ml:id xml:space="preserve">f</ml:id>
										</ml:apply>
									</ml:apply>
								</ml:apply>
							</ml:apply>
						</ml:define>
					</math>
				</region>
				<region region-id="103" left="48" top="489" width="94.5" height="12" align-x="76" align-y="497.5" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag="">
					<math optimize="false" disable-calc="false">
						<ml:define xmlns:ml="http://schemas.mathsoft.com/math20">
							<ml:function>
								<ml:id xml:space="preserve">z6</ml:id>
								<ml:boundVars>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:boundVars>
							</ml:function>
							<ml:apply>
								<ml:plus/>
								<ml:apply>
									<ml:id xml:space="preserve">xL1</ml:id>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:apply>
								<ml:apply>
									<ml:id xml:space="preserve">z5</ml:id>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:apply>
							</ml:apply>
						</ml:define>
					</math>
				</region>
				<region region-id="46" left="48" top="518" width="130" height="26" align-x="80" align-y="533.5" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag="">
					<math optimize="false" disable-calc="false">
						<ml:define xmlns:ml="http://schemas.mathsoft.com/math20">
							<ml:function>
								<ml:id xml:space="preserve">zвх</ml:id>
								<ml:boundVars>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:boundVars>
							</ml:function>
							<ml:apply>
								<ml:mult style="default"/>
								<ml:apply>
									<ml:id xml:space="preserve">z6</ml:id>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:apply>
								<ml:apply>
									<ml:div/>
									<ml:apply>
										<ml:id xml:space="preserve">xC1</ml:id>
										<ml:id xml:space="preserve">f</ml:id>
									</ml:apply>
									<ml:apply>
										<ml:plus/>
										<ml:apply>
											<ml:id xml:space="preserve">z6</ml:id>
											<ml:id xml:space="preserve">f</ml:id>
										</ml:apply>
										<ml:apply>
											<ml:id xml:space="preserve">xC1</ml:id>
											<ml:id xml:space="preserve">f</ml:id>
										</ml:apply>
									</ml:apply>
								</ml:apply>
							</ml:apply>
						</ml:define>
					</math>
				</region>
				<region region-id="48" left="42" top="600" width="122.5" height="54" align-x="80.5" align-y="629.5" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag="">
					<math optimize="false" disable-calc="false">
						<ml:define xmlns:ml="http://schemas.mathsoft.com/math20">
							<ml:function>
								<ml:id xml:space="preserve">КСВ</ml:id>
								<ml:boundVars>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:boundVars>
							</ml:function>
							<ml:apply>
								<ml:div/>
								<ml:apply>
									<ml:plus/>
									<ml:real>1</ml:real>
									<ml:apply>
										<ml:absval/>
										<ml:apply>
											<ml:div/>
											<ml:apply>
												<ml:minus/>
												<ml:apply>
													<ml:id xml:space="preserve">zвх</ml:id>
													<ml:id xml:space="preserve">f</ml:id>
												</ml:apply>
												<ml:real>50</ml:real>
											</ml:apply>
											<ml:apply>
												<ml:plus/>
												<ml:apply>
													<ml:id xml:space="preserve">zвх</ml:id>
													<ml:id xml:space="preserve">f</ml:id>
												</ml:apply>
												<ml:real>50</ml:real>
											</ml:apply>
										</ml:apply>
									</ml:apply>
								</ml:apply>
								<ml:apply>
									<ml:minus/>
									<ml:real>1</ml:real>
									<ml:apply>
										<ml:absval/>
										<ml:apply>
											<ml:div/>
											<ml:apply>
												<ml:minus/>
												<ml:apply>
													<ml:id xml:space="preserve">zвх</ml:id>
													<ml:id xml:space="preserve">f</ml:id>
												</ml:apply>
												<ml:real>50</ml:real>
											</ml:apply>
											<ml:apply>
												<ml:plus/>
												<ml:apply>
													<ml:id xml:space="preserve">zвх</ml:id>
													<ml:id xml:space="preserve">f</ml:id>
												</ml:apply>
												<ml:real>50</ml:real>
											</ml:apply>
										</ml:apply>
									</ml:apply>
								</ml:apply>
							</ml:apply>
						</ml:define>
					</math>
				</region>
				<region region-id="129" left="36" top="680" width="221" height="26" align-x="59.5" align-y="695.5" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag="">
					<math optimize="false" disable-calc="false">
						<ml:define xmlns:ml="http://schemas.mathsoft.com/math20">
							<ml:function>
								<ml:id xml:space="preserve">k</ml:id>
								<ml:boundVars>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:boundVars>
							</ml:function>
							<ml:apply>
								<ml:mult style="default"/>
								<ml:real>20</ml:real>
								<ml:apply>
									<ml:id xml:space="preserve">log</ml:id>
									<ml:apply>
										<ml:absval/>
										<ml:apply>
											<ml:mult style="default"/>
											<ml:apply>
												<ml:mult style="default"/>
												<ml:apply>
													<ml:mult style="default"/>
													<ml:apply>
														<ml:div/>
														<ml:apply>
															<ml:mult style="auto-select"/>
															<ml:real font="0">2</ml:real>
															<ml:apply>
																<ml:id xml:space="preserve">zвх</ml:id>
																<ml:id xml:space="preserve">f</ml:id>
															</ml:apply>
														</ml:apply>
														<ml:apply>
															<ml:plus/>
															<ml:real>50</ml:real>
															<ml:apply>
																<ml:id xml:space="preserve">zвх</ml:id>
																<ml:id xml:space="preserve">f</ml:id>
															</ml:apply>
														</ml:apply>
													</ml:apply>
													<ml:apply>
														<ml:div/>
														<ml:apply>
															<ml:id xml:space="preserve">z5</ml:id>
															<ml:id xml:space="preserve">f</ml:id>
														</ml:apply>
														<ml:apply>
															<ml:id xml:space="preserve">z6</ml:id>
															<ml:id xml:space="preserve">f</ml:id>
														</ml:apply>
													</ml:apply>
												</ml:apply>
												<ml:apply>
													<ml:div/>
													<ml:apply>
														<ml:id xml:space="preserve">z3</ml:id>
														<ml:id xml:space="preserve">f</ml:id>
													</ml:apply>
													<ml:apply>
														<ml:id xml:space="preserve">z4</ml:id>
														<ml:id xml:space="preserve">f</ml:id>
													</ml:apply>
												</ml:apply>
											</ml:apply>
											<ml:apply>
												<ml:div/>
												<ml:apply>
													<ml:id xml:space="preserve">z1</ml:id>
													<ml:id xml:space="preserve">f</ml:id>
												</ml:apply>
												<ml:apply>
													<ml:id xml:space="preserve">z2</ml:id>
													<ml:id xml:space="preserve">f</ml:id>
												</ml:apply>
											</ml:apply>
										</ml:apply>
									</ml:apply>
								</ml:apply>
							</ml:apply>
						</ml:define>
					</math>
				</region>
				<region region-id="63" left="36" top="740" width="158.5" height="11.5" align-x="50" align-y="749.5" show-border="false" show-highlight="true" is-protected="true" z-order="0" background-color="#f00" tag="">
					<text use-page-width="false" push-down="false" lock-width="false">
						<p style="Нормаль" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="inherit" list-style-type="inherit" tabs="inherit">Расчёт при номинальных катушках</p>
					</text>
				</region>
				<region region-id="60" left="264" top="763.5" width="103" height="13.5" align-x="298" align-y="773.5" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag="">
					<math optimize="false" disable-calc="false">
						<ml:define warning="WarnRedefinedUDFunction" xmlns:ml="http://schemas.mathsoft.com/math20">
							<ml:function>
								<ml:id xml:space="preserve">xL2</ml:id>
								<ml:boundVars>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:boundVars>
							</ml:function>
							<ml:apply>
								<ml:mult style="default"/>
								<ml:apply>
									<ml:mult style="default"/>
									<ml:apply>
										<ml:mult style="default"/>
										<ml:apply>
											<ml:mult style="default"/>
											<ml:real>2</ml:real>
											<ml:id xml:space="preserve">π</ml:id>
										</ml:apply>
										<ml:id xml:space="preserve">f</ml:id>
									</ml:apply>
									<ml:id xml:space="preserve">LL2</ml:id>
								</ml:apply>
								<ml:imag symbol="i">1</ml:imag>
							</ml:apply>
						</ml:define>
					</math>
				</region>
				<region region-id="61" left="30" top="769.5" width="103" height="13.5" align-x="64" align-y="779.5" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag="">
					<math optimize="false" disable-calc="false">
						<ml:define warning="WarnRedefinedUDFunction" xmlns:ml="http://schemas.mathsoft.com/math20">
							<ml:function>
								<ml:id xml:space="preserve">xL1</ml:id>
								<ml:boundVars>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:boundVars>
							</ml:function>
							<ml:apply>
								<ml:mult style="default"/>
								<ml:apply>
									<ml:mult style="default"/>
									<ml:apply>
										<ml:mult style="default"/>
										<ml:apply>
											<ml:mult style="default"/>
											<ml:real>2</ml:real>
											<ml:id xml:space="preserve">π</ml:id>
										</ml:apply>
										<ml:id xml:space="preserve">f</ml:id>
									</ml:apply>
									<ml:id xml:space="preserve">LL1</ml:id>
								</ml:apply>
								<ml:imag symbol="i">1</ml:imag>
							</ml:apply>
						</ml:define>
					</math>
				</region>
				<region region-id="117" left="420" top="775.5" width="103" height="13.5" align-x="454" align-y="785.5" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag="">
					<math optimize="false" disable-calc="false">
						<ml:define warning="WarnRedefinedUDFunction" xmlns:ml="http://schemas.mathsoft.com/math20">
							<ml:function>
								<ml:id xml:space="preserve">xL3</ml:id>
								<ml:boundVars>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:boundVars>
							</ml:function>
							<ml:apply>
								<ml:mult style="default"/>
								<ml:apply>
									<ml:mult style="default"/>
									<ml:apply>
										<ml:mult style="default"/>
										<ml:apply>
											<ml:mult style="default"/>
											<ml:real>2</ml:real>
											<ml:id xml:space="preserve">π</ml:id>
										</ml:apply>
										<ml:id xml:space="preserve">f</ml:id>
									</ml:apply>
									<ml:id xml:space="preserve">LL1</ml:id>
								</ml:apply>
								<ml:imag symbol="i">1</ml:imag>
							</ml:apply>
						</ml:define>
					</math>
				</region>
				<region region-id="120" left="12" top="806" width="105" height="26" align-x="40" align-y="821.5" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag="">
					<math optimize="false" disable-calc="false">
						<ml:define warning="WarnRedefinedUDFunction" xmlns:ml="http://schemas.mathsoft.com/math20">
							<ml:function>
								<ml:id xml:space="preserve">z1</ml:id>
								<ml:boundVars>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:boundVars>
							</ml:function>
							<ml:apply>
								<ml:mult style="default"/>
								<ml:real>50</ml:real>
								<ml:apply>
									<ml:div/>
									<ml:apply>
										<ml:id xml:space="preserve">xC1</ml:id>
										<ml:id xml:space="preserve">f</ml:id>
									</ml:apply>
									<ml:apply>
										<ml:plus/>
										<ml:real>50</ml:real>
										<ml:apply>
											<ml:id xml:space="preserve">xC1</ml:id>
											<ml:id xml:space="preserve">f</ml:id>
										</ml:apply>
									</ml:apply>
								</ml:apply>
							</ml:apply>
						</ml:define>
					</math>
				</region>
				<region region-id="121" left="18" top="855" width="94.5" height="12" align-x="46" align-y="863.5" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag="">
					<math optimize="false" disable-calc="false">
						<ml:define warning="WarnRedefinedUDFunction" xmlns:ml="http://schemas.mathsoft.com/math20">
							<ml:function>
								<ml:id xml:space="preserve">z2</ml:id>
								<ml:boundVars>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:boundVars>
							</ml:function>
							<ml:apply>
								<ml:plus/>
								<ml:apply>
									<ml:id xml:space="preserve">xL3</ml:id>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:apply>
								<ml:apply>
									<ml:id xml:space="preserve">z1</ml:id>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:apply>
							</ml:apply>
						</ml:define>
					</math>
				</region>
				<region region-id="122" left="18" top="890" width="126" height="26" align-x="46" align-y="905.5" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag="">
					<math optimize="false" disable-calc="false">
						<ml:define warning="WarnRedefinedUDFunction" xmlns:ml="http://schemas.mathsoft.com/math20">
							<ml:function>
								<ml:id xml:space="preserve">z3</ml:id>
								<ml:boundVars>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:boundVars>
							</ml:function>
							<ml:apply>
								<ml:mult style="default"/>
								<ml:apply>
									<ml:id xml:space="preserve">z2</ml:id>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:apply>
								<ml:apply>
									<ml:div/>
									<ml:apply>
										<ml:id xml:space="preserve">xC2</ml:id>
										<ml:id xml:space="preserve">f</ml:id>
									</ml:apply>
									<ml:apply>
										<ml:plus/>
										<ml:apply>
											<ml:id xml:space="preserve">z2</ml:id>
											<ml:id xml:space="preserve">f</ml:id>
										</ml:apply>
										<ml:apply>
											<ml:id xml:space="preserve">xC2</ml:id>
											<ml:id xml:space="preserve">f</ml:id>
										</ml:apply>
									</ml:apply>
								</ml:apply>
							</ml:apply>
						</ml:define>
					</math>
				</region>
				<region region-id="123" left="18" top="938" width="169.5" height="26" align-x="46" align-y="953.5" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag="">
					<math optimize="false" disable-calc="false">
						<ml:define warning="WarnRedefinedUDFunction" xmlns:ml="http://schemas.mathsoft.com/math20">
							<ml:function>
								<ml:id xml:space="preserve">z4</ml:id>
								<ml:boundVars>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:boundVars>
							</ml:function>
							<ml:apply>
								<ml:plus/>
								<ml:apply>
									<ml:mult style="default"/>
									<ml:apply>
										<ml:id xml:space="preserve">xL2</ml:id>
										<ml:id xml:space="preserve">f</ml:id>
									</ml:apply>
									<ml:apply>
										<ml:div/>
										<ml:apply>
											<ml:id xml:space="preserve">xC3</ml:id>
											<ml:id xml:space="preserve">f</ml:id>
										</ml:apply>
										<ml:apply>
											<ml:plus/>
											<ml:apply>
												<ml:id xml:space="preserve">xC3</ml:id>
												<ml:id xml:space="preserve">f</ml:id>
											</ml:apply>
											<ml:apply>
												<ml:id xml:space="preserve">xL2</ml:id>
												<ml:id xml:space="preserve">f</ml:id>
											</ml:apply>
										</ml:apply>
									</ml:apply>
								</ml:apply>
								<ml:apply>
									<ml:id xml:space="preserve">z3</ml:id>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:apply>
							</ml:apply>
						</ml:define>
					</math>
				</region>
				<region region-id="124" left="18" top="974" width="126" height="26" align-x="46" align-y="989.5" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag="">
					<math optimize="false" disable-calc="false">
						<ml:define warning="WarnRedefinedUDFunction" xmlns:ml="http://schemas.mathsoft.com/math20">
							<ml:function>
								<ml:id xml:space="preserve">z5</ml:id>
								<ml:boundVars>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:boundVars>
							</ml:function>
							<ml:apply>
								<ml:mult style="default"/>
								<ml:apply>
									<ml:id xml:space="preserve">z4</ml:id>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:apply>
								<ml:apply>
									<ml:div/>
									<ml:apply>
										<ml:id xml:space="preserve">xC2</ml:id>
										<ml:id xml:space="preserve">f</ml:id>
									</ml:apply>
									<ml:apply>
										<ml:plus/>
										<ml:apply>
											<ml:id xml:space="preserve">z4</ml:id>
											<ml:id xml:space="preserve">f</ml:id>
										</ml:apply>
										<ml:apply>
											<ml:id xml:space="preserve">xC2</ml:id>
											<ml:id xml:space="preserve">f</ml:id>
										</ml:apply>
									</ml:apply>
								</ml:apply>
							</ml:apply>
						</ml:define>
					</math>
				</region>
				<region region-id="125" left="18" top="1017" width="94.5" height="12" align-x="46" align-y="1025.5" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag="">
					<math optimize="false" disable-calc="false">
						<ml:define warning="WarnRedefinedUDFunction" xmlns:ml="http://schemas.mathsoft.com/math20">
							<ml:function>
								<ml:id xml:space="preserve">z6</ml:id>
								<ml:boundVars>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:boundVars>
							</ml:function>
							<ml:apply>
								<ml:plus/>
								<ml:apply>
									<ml:id xml:space="preserve">xL1</ml:id>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:apply>
								<ml:apply>
									<ml:id xml:space="preserve">z5</ml:id>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:apply>
							</ml:apply>
						</ml:define>
					</math>
				</region>
				<region region-id="126" left="18" top="1046" width="130" height="26" align-x="50" align-y="1061.5" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag="">
					<math optimize="false" disable-calc="false">
						<ml:define warning="WarnRedefinedUDFunction" xmlns:ml="http://schemas.mathsoft.com/math20">
							<ml:function>
								<ml:id xml:space="preserve">zвх</ml:id>
								<ml:boundVars>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:boundVars>
							</ml:function>
							<ml:apply>
								<ml:mult style="default"/>
								<ml:apply>
									<ml:id xml:space="preserve">z6</ml:id>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:apply>
								<ml:apply>
									<ml:div/>
									<ml:apply>
										<ml:id xml:space="preserve">xC1</ml:id>
										<ml:id xml:space="preserve">f</ml:id>
									</ml:apply>
									<ml:apply>
										<ml:plus/>
										<ml:apply>
											<ml:id xml:space="preserve">z6</ml:id>
											<ml:id xml:space="preserve">f</ml:id>
										</ml:apply>
										<ml:apply>
											<ml:id xml:space="preserve">xC1</ml:id>
											<ml:id xml:space="preserve">f</ml:id>
										</ml:apply>
									</ml:apply>
								</ml:apply>
							</ml:apply>
						</ml:define>
					</math>
				</region>
				<region region-id="70" left="30" top="1104" width="133" height="54" align-x="79" align-y="1133.5" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag="">
					<math optimize="false" disable-calc="false">
						<ml:define xmlns:ml="http://schemas.mathsoft.com/math20">
							<ml:function>
								<ml:id xml:space="preserve">КСВид</ml:id>
								<ml:boundVars>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:boundVars>
							</ml:function>
							<ml:apply>
								<ml:div/>
								<ml:apply>
									<ml:plus/>
									<ml:real>1</ml:real>
									<ml:apply>
										<ml:absval/>
										<ml:apply>
											<ml:div/>
											<ml:apply>
												<ml:minus/>
												<ml:apply>
													<ml:id xml:space="preserve">zвх</ml:id>
													<ml:id xml:space="preserve">f</ml:id>
												</ml:apply>
												<ml:real>50</ml:real>
											</ml:apply>
											<ml:apply>
												<ml:plus/>
												<ml:apply>
													<ml:id xml:space="preserve">zвх</ml:id>
													<ml:id xml:space="preserve">f</ml:id>
												</ml:apply>
												<ml:real>50</ml:real>
											</ml:apply>
										</ml:apply>
									</ml:apply>
								</ml:apply>
								<ml:apply>
									<ml:minus/>
									<ml:real>1</ml:real>
									<ml:apply>
										<ml:absval/>
										<ml:apply>
											<ml:div/>
											<ml:apply>
												<ml:minus/>
												<ml:apply>
													<ml:id xml:space="preserve">zвх</ml:id>
													<ml:id xml:space="preserve">f</ml:id>
												</ml:apply>
												<ml:real>50</ml:real>
											</ml:apply>
											<ml:apply>
												<ml:plus/>
												<ml:apply>
													<ml:id xml:space="preserve">zвх</ml:id>
													<ml:id xml:space="preserve">f</ml:id>
												</ml:apply>
												<ml:real>50</ml:real>
											</ml:apply>
										</ml:apply>
									</ml:apply>
								</ml:apply>
							</ml:apply>
						</ml:define>
					</math>
				</region>
				<region region-id="133" left="24" top="1190" width="232" height="26" align-x="58.5" align-y="1205.5" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag="">
					<math optimize="false" disable-calc="false">
						<ml:define xmlns:ml="http://schemas.mathsoft.com/math20">
							<ml:function>
								<ml:id xml:space="preserve">kид</ml:id>
								<ml:boundVars>
									<ml:id xml:space="preserve">f</ml:id>
								</ml:boundVars>
							</ml:function>
							<ml:apply>
								<ml:mult style="default"/>
								<ml:real>20</ml:real>
								<ml:apply>
									<ml:id xml:space="preserve">log</ml:id>
									<ml:apply>
										<ml:absval/>
										<ml:apply>
											<ml:mult style="default"/>
											<ml:apply>
												<ml:mult style="default"/>
												<ml:apply>
													<ml:mult style="default"/>
													<ml:apply>
														<ml:div/>
														<ml:apply>
															<ml:mult style="auto-select"/>
															<ml:real font="0">2</ml:real>
															<ml:apply>
																<ml:id xml:space="preserve">zвх</ml:id>
																<ml:id xml:space="preserve">f</ml:id>
															</ml:apply>
														</ml:apply>
														<ml:apply>
															<ml:plus/>
															<ml:real>50</ml:real>
															<ml:apply>
																<ml:id xml:space="preserve">zвх</ml:id>
																<ml:id xml:space="preserve">f</ml:id>
															</ml:apply>
														</ml:apply>
													</ml:apply>
													<ml:apply>
														<ml:div/>
														<ml:apply>
															<ml:id xml:space="preserve">z5</ml:id>
															<ml:id xml:space="preserve">f</ml:id>
														</ml:apply>
														<ml:apply>
															<ml:id xml:space="preserve">z6</ml:id>
															<ml:id xml:space="preserve">f</ml:id>
														</ml:apply>
													</ml:apply>
												</ml:apply>
												<ml:apply>
													<ml:div/>
													<ml:apply>
														<ml:id xml:space="preserve">z3</ml:id>
														<ml:id xml:space="preserve">f</ml:id>
													</ml:apply>
													<ml:apply>
														<ml:id xml:space="preserve">z4</ml:id>
														<ml:id xml:space="preserve">f</ml:id>
													</ml:apply>
												</ml:apply>
											</ml:apply>
											<ml:apply>
												<ml:div/>
												<ml:apply>
													<ml:id xml:space="preserve">z1</ml:id>
													<ml:id xml:space="preserve">f</ml:id>
												</ml:apply>
												<ml:apply>
													<ml:id xml:space="preserve">z2</ml:id>
													<ml:id xml:space="preserve">f</ml:id>
												</ml:apply>
											</ml:apply>
										</ml:apply>
									</ml:apply>
								</ml:apply>
							</ml:apply>
						</ml:define>
					</math>
				</region>
			</area>
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