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首页> 外文期刊>International Journal of Refrigeration >Use of neural networks and expert systems to control a gas/solid sorption chilling machine
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Use of neural networks and expert systems to control a gas/solid sorption chilling machine

机译:使用神经网络和专家系统控制气体/固体吸附式冷却机

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摘要

This works focuses on using neural networks and expert systems to control a gas/solid sorption chilling machine. In such systems, the cold production changes cyclically with time due to the batchwise operation of the gas/solid reactors. Theaccurate simulation of the dynamic performance of the chilling machine has proven to be difficult for standard computers when using deterministic models. Additionally, some model parameters dynamically change with the reaction advancement. A new modelingapproach is presented here to simulate the performance of such systems using neural networks. The backpropagation learning rule and the sigmoid transfer function have been applied in feedforward, full connected, single hidden layer neural networks.Overall control of this system is divided in three blocks: control of the machine stages, prediction of the machine performance and fault diagnosis.
机译:这项工作的重点是使用神经网络和专家系统来控制气体/固体吸附式冷却机。在这样的系统中,由于气/固反应器的间歇运行,冷产量随时间周期性变化。对于使用确定性模型的标准计算机,很难准确地模拟冷却机的动态性能。另外,一些模型参数随着反应的进行而动态变化。这里提出了一种新的建模方法,以使用神经网络模拟此类系统的性能。反向传播学习规则和S形传递函数已应用于前馈,全连接,单隐层神经网络中。该系统的总体控制分为三个部分:机器阶段控制,机器性能预测和故障诊断。

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