On-Board Satellite Telemetry Forecasting with RNN on RISC-V Based Multicore Processor

Danilo Cappellone, Stefano Di Mascio, G. Furano, A. Menicucci, M. Ottavi
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引用次数: 3

Abstract

The aim of this paper is to assess the feasibility and on-board hardware performance requirements for on-board telemetry forecasting by implementing a Recurrent Neural Network (RNN) on low-cost multicore RISC-V microprocessor. Gravity field and steady-state Ocean Circulation Explorer (GOCE) public telemetry data was used for training RNNs with different hyperparameters and architectures. The prediction accuracy of these models was evaluated using mean error and R-squared score on the same test dataset. The implementation of the RNN on a RISC-V embedded device, representative of future space-grade hardware, required some adaptations and modifications due to the computational requirements and the large memory footprint. The algorithm was implemented to run in parallel on the 8 cores of the microprocessor and tiling was employed for the weight matrices. Further considerations have also been made for the approximation of sigmoid and hyperbolic tangent as activation functions.
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基于RISC-V多核处理器的RNN星载遥测预报
本文的目的是通过在低成本多核RISC-V微处理器上实现递归神经网络(RNN)来评估车载遥测预测的可行性和车载硬件性能要求。利用重力场和稳态海洋环流探测器(GOCE)的公共遥测数据,训练具有不同超参数和结构的rnn。在相同的测试数据集上,使用平均误差和r平方分数来评估这些模型的预测精度。RNN在RISC-V嵌入式设备(未来空间级硬件的代表)上的实现,由于计算需求和大内存占用,需要进行一些调整和修改。该算法在8核微处理器上并行运行,权重矩阵采用平铺法。进一步考虑了s型曲线和双曲正切曲线作为激活函数的近似。
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