Application Research On Real-Time Perception Of Device Performance Status
Zhe Wang, Zhen Wang, Jianwen Wu, Wangzhong Xiao, Yidong Chen, Zihua, Feng, Dian Yang, Hongchen Liu, Bo Liang, Jiaojiao Fu

TL;DR
This paper presents a real-time device performance perception method using TOPSIS, entropy weighting, and time series modeling, enabling accurate performance status identification and prediction for mobile devices.
Contribution
It introduces a novel combination of PCA, TOPSIS, and time series analysis for real-time performance evaluation and prediction of mobile device status.
Findings
High accuracy in real-time performance status identification.
Effective long-term performance prediction.
Enhanced user experience through dynamic power management.
Abstract
In order to accurately identify the performance status of mobile devices and finely adjust the user experience, a real-time performance perception evaluation method based on TOPSIS (Technique for Order Preference by Similarity to Ideal Solution) combined with entropy weighting method and time series model construction was studied. After collecting the performance characteristics of various mobile devices, the device performance profile was fitted by using PCA (principal component analysis) dimensionality reduction and feature engineering methods such as descriptive time series analysis. The ability of performance features and profiles to describe the real-time performance status of devices was understood and studied by applying the TOPSIS method and multi-level weighting processing. A time series model was constructed for the feature set under objective weighting, and multiple…
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Taxonomy
TopicsAdvanced Measurement and Detection Methods · Industrial Vision Systems and Defect Detection
MethodsSparse Evolutionary Training · Principal Components Analysis
