An accurate and reliable technique for predicting Remaining Useful Life (RUL) for battery cells proves helpful in battery-operated IoT devices, especially in remotely operated sensor nodes. Data-driven methods have proved to be the most effective methods until now. These IoT devices have low computational capabilities to save costs, but Data-Driven battery health techniques often require a comparatively large amount of computational power to predict SOH and RUL due to most methods being feature-heavy. This issue calls for ways to predict RUL with the least amount of calculations and memory. This paper proposes an effective and novel peak extraction method to reduce computation and memory needs and provide accurate prediction methods using the least number of features while performing all calculations on-board. The model can self-sustain, requires minimal external interference, and hence operate remotely much longer. Experimental results prove the accuracy and reliability of this method. The Absolute Error (AE), Relative error (RE), and Root Mean Square Error (RMSE) are calculated to compare effectiveness. The training of the GPR model takes less than 2 seconds, and the correlation between SOH from peak extraction and RUL is 0.97.
翻译:对电池电池预测剩余使用寿命(RUL)的准确可靠技术证明有助于电池操作的IOT装置,特别是遥控传感器节点。数据驱动方法已证明是迄今为止最有效的方法。这些IOT装置的计算能力较低,可以节省成本,但数据驱动电池健康技术往往需要相对大量的计算能力来预测SOH和RUL。由于大多数方法的特性重,这个问题要求用最少的计算和记忆量来预测RUL。本文建议采用一种有效和新的峰值提取方法,以减少计算和内存需要,并提供精确的预测方法,使用最少的功能进行机载计算。模型可以自我保持,需要最小的外部干扰,因此操作时间要长得多。实验结果证明这种方法的准确性和可靠性。绝对错误(AE)、相对错误(RE)和根势平方方差(RUSE)是用来比较有效性的。GPR模型的培训需要不到2秒钟,而顶点提取和RUL的SAH之间的关联性是0.97。