期刊文献+

化工过程的集成建模方法研究 被引量:3

Researching of hybrid modeling method for chemical process
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摘要 机理模型能对生产过程做出科学的解释,非机理模型是利用合适的数学方法对需要建立联系的输入输出数据进行处理,寻找隐藏在输入输出数据之间的数值关系。然而,对于大多数机理不完全明确的情况,使用集成建模方法将多个机理模型和(或)多个非机理模型通过一定的方式联结起来,可建立起一个更符合实际工况的模型,更好的服务于工业生产。
出处 《制造业自动化》 北大核心 2009年第10期139-141,共3页 Manufacturing Automation
基金 浙江省科技厅科技计划项目(2007C31045)
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