基于神经网络的SSD热节流剖面预测

Chaolun Zheng, Hedan Zhang, Steve Chi, Ning Ye
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引用次数: 0

摘要

在过去的几十年里,固态硬盘(ssd)的容量和性能不断增长,导致了更高的功耗和越来越多的热挑战。热节流已广泛应用于SSD产品,以保持关键部件的温度在限制内。虽然在固件开发中,热节流配置文件对SSD性能至关重要,但使用传统的计算流体动力学(CFD)方法模拟热节流配置文件可能非常耗时。本文提出了一种基于神经网络的快速预测方法,用于预测不同工况下的热节流曲线。该方法采用了长短期记忆(LSTM)神经网络框架。神经网络将从单个工作负载的测试数据中学习,以模拟热性能,从而预测各种工作负载的热节流概况。结果表明,预测的各种工作负载的热节流曲线与实验测试数据一致,精度较高。预测时间大大缩短到几分钟。这项工作表明,机器学习可以有效地应用于SSD热测试数据,以模拟不同测试参数(包括功率、环境温度和节流温度限制)下的热性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SSD Thermal Throttling Profile Prediction Using Neural Network
In the past decades, the growing capacity and performance of Solid-State Drives (SSDs) have resulted in higher power consumption and increasing thermal challenges. Thermal throttling has been widely adopted in SSD products to keep critical component temperatures within limits. While thermal throttling profiles are essential for SSD performance in firmware developments, using the traditional Computational Fluid Dynamics (CFD) approach to simulate thermal throttling profiles can be time-consuming. In this paper, a fast-prediction method using a neural network approach is proposed for predicting the thermal throttling profiles under different workloads. The Long Short-Term Memory (LSTM) neural network framework has been adopted in this method. The neural network will learn from the testing data of a single workload to model the thermal performance and hence predict thermal throttling profiles for various workloads. Results have shown that the predicted thermal throttling profiles for various workloads align with experimental test data with good accuracy. Prediction time is significantly reduced to a few minutes. This work has demonstrated that machine learning can be effectively applied to SSD thermal test data to model thermal performances with different test parameters, including power, ambient temperature, and throttling temperature limits.
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