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Large flow compressed air load forecasting based on Least Squares Support Vector Machine within the Bayesian evidence framework

机译:基于最小二乘支持向量机的大流量压缩空气负荷预测贝叶斯证据框架内

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Energy-saving of compressed air system was very important for the sustainable development of enterprises, which could be achieved though fast and accurate load forecasting. In this paper, according to the distribution rules and characteristics of 24 hours compressed air supply, the 24h compressed air flow demand model was firstly built with least square support vector machine (LSSVM). In order to avoid the long time consumption for determining the model parameters in the traditional cross validation method, Bayesian evidence framework was selected to train the parameters, and then identified and optimized them. Meanwhile, Nyström low- rank approximation decomposition algorithm was used to accelerate kernel matrix decomposition process. Though the experimental verification with real industrial data, the modeling time of LSSVM within Bayesian evidence framework is reduced to 1/20 compared with traditional cross-validation method; in the contrast with Practical Swarm Optimization (PSO), the modeling time is reduced to 80%, and the prediction accuracy can increase 14.3%, proving this method quite suitable for fast and accurate forecasting for large flow compressed air load.
机译:压缩空气系统的节能对于企业的可持续发展非常重要,这可以实现快速准确的负荷预测。本文根据分布规则和24小时的特性压缩空气供应,首先用最小二乘支持向量机(LSSVM)构建24H压缩空气流量模型。为了避免长时间消耗来确定传统交叉验证方法中的模型参数,选择贝叶斯证据框架培训参数,然后识别并优化它们。同时,NYSTRÖM低秩近似分解算法用于加速核矩阵分解过程。虽然具有实际工业数据的实验验证,但与传统交叉验证方法相比,贝叶斯证据框架内LSSVM的建模时间降至1/20;在实际群优化(PSO)的对比中,建模时间减少到80%,预测精度可以增加14.3%,证明这种方法非常适合于对大型流量压缩空气载荷的快速准确预测。

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