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CONTINUOUS LEARNING OF SIMULATION TRAINED DEEP NEURAL NETWORK MODEL

机译:模拟训练的深层神经网络模型的连续学习

摘要

The present invention provides a system and method of side-stepping the need to retrain neural network model after initially trained using a simulator by comparing real-world data to data predicted by the simulator for the same inputs, and developing a mapping correlation that adjusts real world data toward the simulation data. Thus, the decision logic developed in the simulation-trained model is preserved and continues to operate in an altered reality. A threshold metric of similarity can be initially provided into the mapping algorithm, which automatically adjusts real world data to adjusted data corresponding to the simulation data for operating the neural network model when the metric of similarity between the real world data and the simulation data exceeds the threshold metric. Updated learning can continue as desired, working in the background as conditions are monitored.
机译:本发明提供了一种系统和方法,其通过将真实世界的数据与由模拟器针对相同输入预测的数据进行比较,并开发可调整真实的映射相关性,从而避免了在最初使用模拟器训练后重新训练神经网络模型的需求。世界数据转为模拟数据。因此,在模拟训练模型中开发的决策逻辑得以保留并继续在改变的现实中运行。可以在映射算法中最初提供相似性阈值度量,当现实世界数据和模拟数据之间的相似性度量超过时,映射算法会自动将现实世界数据调整为与模拟数据相对应的调整后数据,以操作神经网络模型。阈值指标。更新的学习可以根据需要继续进行,并在监视条件时在后台进行。

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