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Selection of training data for modeling essential oil extraction system using NNARX structure

机译:使用NNARX结构进行建模精油提取系统的培训数据

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In this work, the suitable training data for modeling the steam distillation essential oil extraction system is presented. The data were collected from the self-refilling distillation column using RTD sensor with associated signal conditioning circuit The control signal is on/off. The heating system implementing 1.5kW electrical immersion heater. The power switching is performed using zero-crossing solid-state-relay. The input signals are the PRBS with different probabilities. There are 3 situations of data to be investigated. Since the system is highly-nonlinear, it is expected that the training data that covers the full operating condition will be the optimum training data These data are separated into training and testing data by interlacing technique, which make the total number of data 6. For each data, the model order selection is based on ARX structure and MDL information criterion. These data are cross-validated between each others and the validation results are presented and concluded The performance indexes are the percentages of R{sup}2, adjusted-R{sup}2 and NMSE.
机译:在这项工作中,提出了用于建模蒸汽蒸馏精油提取系统的合适训练数据。使用带有相关信号调节电路的RTD传感器从自补充蒸馏塔收集数据,控制信号开/关。加热系统实现1.5KW电浸加热器。使用过零固态继电器进行电源切换。输入信号是具有不同概率的PRB。有3个待调查数据的情况。由于系统是高度非线性的,预计涵盖完整操作条件的培训数据将是通过隔行扫描技术分离为训练和测试数据的最佳训练数据,这使得数据的总数为6.每个数据,模型顺序选择都基于ARX结构和MDL信息标准。这些数据在彼此之间交叉验证,并呈现验证结果并结束性能索引是R {sup} 2,调整后-r {sup} 2和nmse的百分比。

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