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Hybrid neuro-fuzzy network-priori knowledge model in temperature control of a gas water heater system

机译:燃气热水器系统温度控制中的混合神经模糊网络 - 先验知识模型

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This paper presents a hybrid neuro-fuzzy network-priori knowledge model in temperature control of a gas water heater system. The hybrid model consists in a cascade connection of two blocks: an approximate first principles model (FPM) and an unknown block. The first principles model is constructed based in the balance equations of the system and in a priori knowledge. The unknown part of the global model is modeled with a neuro-fuzzy structure which is based in a priori knowledge and identified with input/output data of the system. The neuro-fuzzy hybrid model (NFHM) of the gas water gas heater consists in a cascade connection of a neuro-fuzzy model with a first principles model. The proposed hybrid model is tuned using gradient descent combined with least square algorithm off-line. A Smith predictive controller is constructed based in the water heater hybrid model. Due to the characteristics of the model, the Smith predictive control structure is simplified, linearizing the system relatively to the input gas flow and it presents a special configuration for multiple input with different time delays. Finally, the control of the output water temperature results are shown and discussed.
机译:本文介绍了气体热水器系统温度控制中的混合神经模糊网络 - 先验知识模型。混合模型包括两个块的级联连接:近似的第一原理模型(FPM)和未知块。第一原理模型基于系统的平衡方程和先验知识构建。全局模型的未知部分是用神经模糊结构建模的,该结构基于先验知识并用系统的输入/输出数据识别。气体水气体加热器的神经模糊混合模型(NFHM)包括具有第一原理模型的神经模糊模型的级联连接。使用梯度下降与最小二乘算法离线使用梯度下降来调谐所提出的混合模型。基于热水加热器混合模型构建史密斯预测控制器。由于模型的特性,简化了史密斯预测控制结构,对系统相对于输入气流进行了线性化,并且它具有不同时间延迟的多个输入的特殊配置。最后,示出并讨论了输出水温结果的控制。

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