首页> 外文会议>International Conference on Web Information Systems and Mining;WISM 2009 >Microcontroller Compatible Sealed Lead Acid Battery Remaining Energy Prediction Using Adaptive Neural Fuzzy Inference System
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Microcontroller Compatible Sealed Lead Acid Battery Remaining Energy Prediction Using Adaptive Neural Fuzzy Inference System

机译:基于自适应神经模糊推理的单片机密封铅酸蓄电池剩余能量预测。

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All over the world, many portable devices need battery to run. Every expert has to use efficient hardware and software documentation to make battery last longer and make a correlation between microcontrollersȁ9; duties and the remaining energy of batteries. In order to make battery last longer, battery information must be evaluated continuously. In many devices, fluctuating current is used due to its own load so alternating current makes it hard to compute the remaining battery level. For many devices, there could be battery level indicator as solution. This solution gives clue about the remaining time for user but it does not give any hint for microcontroller about battery situation. For low cost devices, it could be very difficult to estimate the remaining storage energy in the battery. In this study, microcontroller compatible sealed lead acid battery remaining energy predictor based on adaptive neural fuzzy inference system has been designed and proposed. In order to test proposed method, mean absolute error and leave one out have been used to measure proposed system performance. The obtained mean absolute error results for leave one out is 10.55, epoch error is 11.72. Through the study, low adaptive neural fuzzy inference system rules and low microcontroller memory consumption were aimed.
机译:在世界各地,许多便携式设备都需要电池才能运行。每个专家都必须使用有效的硬件和软件文档来延长电池寿命并在微控制器之间建立联系[9]。职责和电池的剩余能量。为了使电池寿命更长,必须连续评估电池信息。在许多设备中,由于其自​​身的负载而使用波动的电流,因此交流电使其很难计算剩余的电池电量。对于许多设备,可能会有电池电量指示器作为解决方案。该解决方案为用户提供了有关剩余时间的线索,但没有为微控制器提供有关电池情况的任何提示。对于低成本设备,可能很难估计电池中的剩余存储能量。本研究基于自适应神经模糊推理系统,设计并提出了微控制器兼容的密封铅酸蓄电池剩余能量预测器。为了测试所提出的方法,平均绝对误差和遗漏值已用于测量所提出的系统性能。留出的平均绝对误差结果为10.55,历时误差为11.72。通过研究,目标是低自适应神经模糊推理系统规则和低微控制器内存消耗。

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