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							<ml:mult/>
							<ml:real>2</ml:real>
							<ml:id xml:space="preserve">π</ml:id>
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					</ml:apply>
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						<ml:matrix rows="3" cols="1">
							<ml:real>28.962734480085757</ml:real>
							<ml:real>5.0074671641315334</ml:real>
							<ml:real>8.9360259670448879E-08</ml:real>
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					<i>frequenze proprie [Hz]</i>
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				<p style="Normal" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="inherit" list-style-type="inherit" tabs="inherit">Matrice modale</p>
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								<ml:real>-1</ml:real>
								<ml:real>-0.90041337124010323</ml:real>
								<ml:real>0.28103720341160915</ml:real>
								<ml:real>-1</ml:real>
								<ml:real>-1</ml:real>
								<ml:real>-0.25000000000000011</ml:real>
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						<ml:matrix rows="3" cols="1">
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							<ml:real>31.462844111855478</ml:real>
							<ml:real>5.6146707060711692E-07</ml:real>
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				<p style="Normal" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="inherit" list-style-type="inherit" tabs="inherit">Matrice modale normalizzata (l'ultima riga contiene elementi unitari)</p>
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								<ml:apply>
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										<ml:real>2</ml:real>
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										<ml:id xml:space="preserve" font="17">Φ</ml:id>
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								<ml:apply>
									<ml:div/>
									<ml:apply>
										<ml:matcol/>
										<ml:id xml:space="preserve" font="17">Φ</ml:id>
										<ml:real>3</ml:real>
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									<ml:apply>
										<ml:indexer/>
										<ml:id xml:space="preserve" font="17">Φ</ml:id>
										<ml:sequence>
											<ml:real>3</ml:real>
											<ml:real>3</ml:real>
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								</ml:apply>
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								<ml:real>-236.99620901781844</ml:real>
								<ml:real>1</ml:real>
								<ml:real>-3.5582477617221113</ml:real>
								<ml:real>-3.2038938628397577</ml:real>
								<ml:real>1</ml:real>
								<ml:real>3.9999999999999982</ml:real>
								<ml:real>3.9999999999999982</ml:real>
								<ml:real>1</ml:real>
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								<ml:real>2</ml:real>
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						<ml:real>200</ml:real>
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			<math optimize="false" disable-calc="false">
				<ml:define warning="WarnRedefinedUDScalar" xmlns:ml="http://schemas.mathsoft.com/math30">
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					<ml:range>
						<ml:sequence>
							<ml:real>0</ml:real>
							<ml:real>0.5</ml:real>
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						<ml:real>40</ml:real>
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			<math optimize="false" disable-calc="false">
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					<ml:apply>
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						<ml:real>1</ml:real>
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				<p style="Normal" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="inherit" list-style-type="inherit" tabs="inherit">Curve caratteristiche (motore e utilizzatore)</p>
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								<ml:real>2</ml:real>
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				<p style="Normal" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="inherit" list-style-type="inherit" tabs="inherit">Momento d'inerzia equivalente ridotto all'asse del motore</p>
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