Information erasure without entropy production of $k1n2$ per bit by a quasi-static potential change subjected to a Brownian motion
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概要
著者
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Loe Kia-fock
Department Of Information Systems And Computer Science National University Of Singapore
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Goto Eiichi
Department Of Information And Computer Science Kanagawa University
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Matsueda Hideaki
Department of Information Science, Kochi University
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Matsueda Hideaki
Department Of Information Science Kochi University
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Matsueda Hideaki
Department Of Information Science Faculty Of Science Kochi University
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