基于集总参数热网络法的四足机器人温度分布预测

Temperature Distribution Prediction of the Quadruped Robot Based on the Lumped-parameter Thermal Networks

  • 摘要: 建立准确的热模型以预测机器人全身电机温度分布是实现热管理的重要前提。四足机器人内部热源众多,传热路径复杂,现有热模型一般仅考虑单个电机的发热,忽略了紧凑型结构下电机与其他热源之间的热交换,导致模型精度较低。针对此问题,提出了一种基于集总参数热网络法的四足机器人全身热模型,并采用最小二乘法辨识模型参数。该模型综合考虑了电机自身发热、电机之间和电机与机载电脑之间的热交换、关节摩擦生热以及移动过程中的受迫对流散热等因素。基于该模型,在四足机器人平台上针对不同速度、多种步态和负载工况分别进行了温度分布预测。结果表明,关节测点处预测结果与实际温度相比较,最大误差小于5℃,预测准确性较仅考虑单电机的热模型显著提升。

     

    Abstract: It is fundamental for effective thermal management to build an accurate thermal model to predict motor temperature distribution throughout the entire robot. However, quadruped robots contain multiple internal heat sources and complex heat transfer pathways. Existing thermal models focus only on individual motor heat generation, and neglect heat exchange between motors and other heat sources within the compact structure, resulting in reduced accuracy. To address this issue, a whole-body thermal model for quadruped robots is proposed based on the lumped-parameter thermal network, with model parameters identified using the least squares method. This model comprehensively considers motor self-heating, heat exchange among motors and between motors and the onboard computer, heat generated from joint friction and forced convective cooling during locomotion. Temperature distribution predictions are conducted on a quadruped robot platform across various speeds, gaits, and load conditions. The comparison between predicted temperatures at the joint measurement points and actual measurements shows a maximum error of less than 5℃, indicating significantly improved prediction accuracy over thermal models that consider motors individually.

     

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