首页> 外文期刊>Journal of Transportation Technologies >Implementation of Radial Basis Function Artificial Neural Network into an Adaptive Equivalent Consumption Minimization Strategy for Optimized Control of a Hybrid Electric Vehicle
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Implementation of Radial Basis Function Artificial Neural Network into an Adaptive Equivalent Consumption Minimization Strategy for Optimized Control of a Hybrid Electric Vehicle

机译:径向基函数人工神经网络实现自适应等效消耗最小化策略,用于混合动力电动车的优化控制

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Continued increases in the emission of greenhouse gases by passenger ve hicles ha ve accelerated the production of hybrid electric vehicles. With this increase in production, there has been a parallel demand for continuously improving strategies of hybrid electric vehicle control. The goal of an ideal control strategy is to maximize fuel economy while minimizing emissions. Methods exist by which the globally optimal control strategy may be found. However, these methods are not applicable in real-world driving applications since these methods require a priori knowledge of the upcoming drive cycle. Real-time control strategies use the global optimal as a benchmark against which performance can be evaluated. The goal of this work is to use a previously defined strategy that has been shown to closely approximate the global optimal and implement a radial basis function (RBF) artificial neural network (ANN) that dynamically adapts the strategy based on past driving conditions. The strate gy used is the Equivalent Consumption Minimization Strategy (ECMS), which uses an equivalence factor to define the control strategy and the power train component torque split. An equivalence factor that is optimal for a single drive cycle can be found offline with a priori knowledge of the drive cycle. The RBF-ANN is used to dynamically update the equivalence factor by examining a past time window of driving characteristics. A total of 30 sets of training data (drive cycles) are used to train the RBF-ANN. For the majority of drive cycles examined, the RBF-ANN implementation is shown to produce fuel economy values that are within ±2.5% of the fuel economy obtained with the optimal equivalence factor. The advantage of the RBF-ANN is that it does not require a priori drive cycle knowledge and is able to be implemented in real-time while meeting or exceeding the performance of the optimal ECMS. Recommendations are made on how the RBF-ANN could be improved to produce better results across a greater array of driving conditions.
机译:在由乘客温室气体的排放增加持续五个公顷VE加速生产混合动力电动汽车的hicles。与此产量增加,出现了用于混合动力电动车辆控制的不断改进策略并行需求。一个理想的控制策略的目标是最大限度地提高燃油经济性的同时最大限度地减少排放。方法存在由全局最优控制策略可被发现。然而,这些方法并不适用于实际驾驶的应用,因为这些方法都需要即将到来的驱动周期的先验知识。实时控制策略,利用全球最佳的,因为对这些性能进行评估的基准。这项工作的目的是使用已被证明接近于全局最优,并实现径向基函数(RBF)人工神经网络(ANN),基于过去的驾驶条件动态地适应战略先前定义的策略。所使用的施特拉特gy为等效消耗最小策略(ECMS),其使用一个等价因子来定义控制策略和动力传动系部件的扭矩分流。即用于单个驱动循环最佳的等价系数可以脱机的一个的驾驶循环的先验知识被发现。将RBF-ANN用于通​​过检查者的驾驶特性过去时间窗口动态更新均衡因子。共30组训练数据(驱动周期)被用来训练RBF-ANN。对于大多数驱动循环的检查中,RBF-ANN实现被示出,以产生与本最佳均衡因子得到的燃料经济性的±2.5%之内的燃料经济性的值。在RBF神经网络的优势在于它不需要先验驱动周期知识是能够实时实现,而达到或超过最佳ECMS的性能。建议在RBF神经网络如何改进跨越的驾驶条件更大的阵列产生更好的结果做出。

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