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首页> 外文期刊>Applied Artificial Intelligence >MULTIPLE DECISION EXPERT SYSTEMS FOR PERFORMANCE ANALYSIS OF A BOILER SYSTEM
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MULTIPLE DECISION EXPERT SYSTEMS FOR PERFORMANCE ANALYSIS OF A BOILER SYSTEM

机译:锅炉系统性能分析的多决策专家系统

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Artificial neural networks (ANN)-based multiple decision expert systems (MDES) were developed for assessing the performance of a boiler system. Different configurations of ANN were used with different decision combination methods, including a neural combiner, to propose the model. The model was developed using the plant data collected over a period of fivemonths to predict steam temperature, pressure, and mass flow rate, using feed water pressure, feed water temperature, conveyor speed, and incinerator exit temperature as the input parameters. The predictive capability of the model is evaluated in terms of both correlation coefficient (R) and mean absolute percentage error (MAPE). The results observed from this work demonstrate that neural combiner and ANN-based MDES can efficiently predict the data on steam properties consistently, and that the model can serve as an efficient tool for monitoring boiler behavior under real-time conditions. Superiority of the proposed model over others under various scenarios is also demonstrated.
机译:基于人工神经网络(ANN)的多决策专家系统(MDES)被开发用于评估锅炉系统的性能。 ANN的不同配置与包括神经组合器在内的不同决策组合方法一起使用,以提出模型。该模型是使用五个月期间收集的工厂数据开发的,用于预测蒸汽温度,压力和质量流量,并使用给水压力,给水温度,输送机速度和焚烧炉出口温度作为输入参数来开发该模型。根据相关系数(R)和平均绝对百分比误差(MAPE)评估模型的预测能力。从这项工作中观察到的结果表明,神经组合器和基于ANN的MDES可以有效地一致地预测蒸汽特性数据,并且该模型可以用作实时条件下监控锅炉行为的有效工具。还展示了所提出的模型在各种情况下优于其他模型的优势。

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