一种数据驱动的电动无人机功耗模型

X. She, Xianke Lin, H. Lang
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引用次数: 3

摘要

无人驾驶飞行器(UAV)正成为一项广泛应用于农业、运输等多种行业的技术。然而,无人机的飞行范围受到其剩余能量消耗的限制。因此,为了优化飞行控制,重要的是要估计无人机的瞬时功率,以便飞行控制器可以确定最佳的方法来增加操作时间和有效的能量保存。通过预测这种能量,无人机可以利用这些信息来优化飞行。本文提出了一种基于神经网络的无人机功耗预测模型,该模型具有较高的保真度和适应性。所提出的方法不需要了解无人机的所有特性,例如动力学,从而更容易实现。实验证明了神经网络模型的预测能力。
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A Data-Driven Power Consumption Model for Electric UAVs
Unmanned aerial vehicles (UAV) are becoming a widely applied technology in many kinds of industries, such as agriculture and delivery transportation. However, the range of the drone is limited by the amount of energy it has left to consume. Because of this, in order to optimize the flight control, it is important to estimate the instantaneous power of the drone so that the flight controller can determine the best method to increase the operational time as well as effective energy preservation. By being able to predict this power, a drone can use such information to optimize the flight. This paper proposes the use of a neural network-based model for predicting the power consumption of a drone, which offers a prediction that is high in fidelity and adaptability. The proposed method does not require the knowledge of all the drone’s characteristics, such as dynamics, which allows for easier implementation. Experiments are carried out to demonstrate the benefits of the neural network model’s prediction capabilities.
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