Research on Agent-Based Energy Saving System of Civil

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This paper deeply analyzes the urban civil system, energy-saving decision-making mechanism, the system components and the related energy-saving anti-adjustment mechanism based on the proposed energy-saving urban civil system's basis. It also presents the classification decision-making and decision-making process for the civil on various components on building systems in decision-making energy-saving features on the system proposed civil heat, urban heating network and the energy saving civil monomer decision making. It also builds the decision support for the city civil agent-based energy-saving system, realizing the basic institutions of the agent to propose the energy-saving urban civil decision.

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Advanced Materials Research (Volumes 816-817)

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1220-1224

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September 2013

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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