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																	<ml:id xml:space="preserve">Rп</ml:id>
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																<ml:mult style="default"/>
																<ml:id xml:space="preserve">Rп</ml:id>
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																	<ml:mult style="default"/>
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																		<ml:id xml:space="preserve">Iк</ml:id>
																		<ml:id xml:space="preserve">Rэ</ml:id>
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													<ml:apply>
														<ml:mult style="default"/>
														<ml:real>7.</ml:real>
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															<ml:mult style="default"/>
															<ml:id xml:space="preserve">Rп</ml:id>
															<ml:id xml:space="preserve">R2</ml:id>
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												<ml:apply>
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													<ml:real>10.</ml:real>
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														<ml:id xml:space="preserve">R2</ml:id>
														<ml:apply>
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													<ml:real>7.</ml:real>
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														<ml:id xml:space="preserve">R2</ml:id>
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													<ml:real>10.</ml:real>
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														<ml:mult style="default"/>
														<ml:id xml:space="preserve">Uп</ml:id>
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											<ml:real>10.</ml:real>
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													<ml:mult style="default"/>
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													<ml:real>7.</ml:real>
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														<ml:id xml:space="preserve">Rэ</ml:id>
														<ml:id xml:space="preserve">β</ml:id>
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											</ml:apply>
											<ml:apply>
												<ml:mult style="default"/>
												<ml:real>10.</ml:real>
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													<ml:mult style="default"/>
													<ml:id xml:space="preserve">R2</ml:id>
													<ml:apply>
														<ml:mult style="default"/>
														<ml:id xml:space="preserve">Iк</ml:id>
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											<ml:mult style="default"/>
											<ml:real>7.</ml:real>
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									<ml:id xml:space="preserve">Iк</ml:id>
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														<ml:real>10.</ml:real>
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															<ml:id xml:space="preserve">Rп</ml:id>
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																	<ml:id xml:space="preserve">Rэ</ml:id>
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																	<ml:id xml:space="preserve">Iк</ml:id>
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																<ml:id xml:space="preserve">Rп</ml:id>
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															<ml:mult style="default"/>
															<ml:real>10.</ml:real>
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			<math optimize="false" disable-calc="false">
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				<ml:define xmlns:ml="http://schemas.mathsoft.com/math20">
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			<math optimize="false" disable-calc="false">
				<ml:define xmlns:ml="http://schemas.mathsoft.com/math20">
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																	<ml:real>10.</ml:real>
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																	<ml:real>7.</ml:real>
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																	<ml:real>10.</ml:real>
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																	<ml:real>7.</ml:real>
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														<ml:real>10.</ml:real>
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													<ml:real>7.</ml:real>
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													<ml:real>7.</ml:real>
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													<ml:real>7.</ml:real>
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													<ml:mult style="default"/>
													<ml:real>10.</ml:real>
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															<ml:id xml:space="preserve">rэ</ml:id>
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													<ml:id xml:space="preserve">ββ</ml:id>
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						<ml:define xmlns:ml="http://schemas.mathsoft.com/math20">
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																<ml:real>7.</ml:real>
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																<ml:real>7.</ml:real>
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																<ml:mult style="default"/>
																<ml:real>10.</ml:real>
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																	<ml:id xml:space="preserve">r2</ml:id>
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