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Operating Rules Classification System Of Water Supply Reservoir Based On Learning Classifier System

机译:基于学习分类器系统的给水库运行规则分类系统

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摘要

Genetic algorithm-based learning classifier system (LCS) is a massively parallel, message-passing and rule-based machine learning system. But its potential self-adaptive learning capability has not been paid enough attention in reservoir operation research. In this paper, an operating rule classification system based on LCS, which learns through credit assignment (the bucket brigade algorithm) and rule discov-ery(the genetic algorithm), is established to extract water-supply reservoir operating rules. The proposed system acquires the online identification rate 95% for training samples and offline rate 85% for testing samples in a case study, and further discussions are made about the impacts on the performances or behaviors of the rule classification system from three aspects of obtained rules, training or testing samples and the comparisons between the rule classification system and the artificial neural network (ANN). The results indicate the learning classifier system is practical and effective to obtain the reservoir supply operating rules.
机译:基于遗传算法的学习分类器系统(LCS)是大规模并行,基于消息传递和基于规则的机器学习系统。但是其潜在的自适应学习能力在水库调度研究中并未得到足够的重视。本文建立了一种基于LCS的运行规则分类系统,该系统通过信用分配(水桶大队算法)和规则发现(遗传算法)学习,提取供水水库运行规则。在案例研究中,该系统对训练样本的在线识别率为95%,对于测试样本的离线识别率为85%,并从获得的规则的三个方面进一步讨论了对规则分类系统的性能或行为的影响。 ,训练或测试样本以及规则分类系统与人工神经网络(ANN)之间的比较。结果表明,该学习分类器系统是实用有效的,能获得水库补给运行规则。

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