Use of Hierarchical Temporal Memory to Assess Reactive and Proactive Dissonance for Anomaly Signal Management

Q4 Mathematics
Dr. Nidhi Mishra, Dr. F Rahman, Mr. Om Hari Naryan Kushwaha
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引用次数: 0

Abstract

A compelling group the board framework offers prompt receptive or proactive treatment of possible problem areas, including packed circumstances and dubious developments, which relieve or evades serious episodes and fatalities. The group the board space creates spatial and transient goal that requests different modern components to quantify, concentrates, and interact with the information to deliver a significant reflection. Swarm the board incorporates demonstrating the developments of a group to project compelling systems that help fast emersion from a risky and deadly circumstance. Web of Things (IoT) advancements, AI procedures, and specialized techniques can be utilized to detect the group trademark/thickness and proposition early recognition of such occasions or far superior expectation of likely mishaps to illuminate the administration specialists. Different AI strategies have been applied for swarm the board; in any case, the quick progression in profound various leveled models that gains from a nonstop stream of information has not been completely explored in this specific situation. For instance, Hierarchical Temporal Memory (HTM) has shown strong capacities for application areas that require internet learning and demonstrating transient data. This paper proposes another HTM-based structure for peculiarity identification in a group the board framework. The proposed system offers two capabilities: (1) responsive discovery of group oddities and (2) proactive location of peculiarities by foreseeing expected irregularities before occurring. The exact assessment demonstrates that HTM accomplished 94.22%, which outflanks k-Nearest Neighbor Global Anomaly Score (kNN-GAS) by 18.12%, Independent Component Analysis-Local Outlier Probability (ICA-LoOP) by 18.17%, and Singular Value Decomposition Influence Outlier (SVD-IO) by 18.12%, in swarm different irregularity location. Besides, it shows the capacity of the proposed alarming system in anticipating potential group irregularities. For this reason, a mimicked swarm dataset was made utilizing the MassMotion swarm recreation device.
使用分层时间记忆评估异常信号管理的反应性和主动性失调
董事会框架是一个令人信服的群体,它对可能的问题领域提供了及时、接受或积极的处理,包括拥挤的环境和可疑的事态发展,从而缓解或避免严重事件和死亡。小组董事会空间创造了空间和瞬态目标,要求不同的现代组件量化、集中信息并与信息互动,以提供重要的反映。Swarm董事会结合了一个团队的发展,以项目引人注目的系统,帮助快速从危险和致命的环境中恢复过来。物联网(IoT)的进步、人工智能程序和专业技术可用于检测集团商标/厚度和主张——对此类情况的早期识别或对可能发生的事故的更高预期,以照亮管理专家。不同的人工智能策略已被应用于群体董事会;无论如何,在这种特定的情况下,从源源不断的信息中获得的各种层次的深刻模型的快速发展还没有得到完全的探索。例如,分层时间存储器(HTM)在需要互联网学习和演示瞬态数据的应用领域显示出强大的能力。本文提出了另一种基于HTM的群体板框架特征识别结构。所提出的系统提供了两种能力:(1)对群体奇异性的响应性发现;(2)通过在发生之前预见预期的不规则性来主动定位特征。精确评估表明,在群体不同的不规则位置上,HTM完成了94.22%,比k近邻全局异常得分(kNN-GAS)高18.12%,比独立分量分析局部异常概率(ICA-LoOP)高18.17%,比奇异值分解影响异常值(SVD-IO)低18.12%。此外,它还显示了所提出的警报系统在预测潜在的群体违规行为方面的能力。因此,利用MassMotion群体娱乐设备制作了一个模拟的群体数据集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Philippine Statistician
Philippine Statistician Mathematics-Statistics and Probability
CiteScore
0.50
自引率
0.00%
发文量
92
期刊介绍: The Journal aims to provide a media for the dissemination of research by statisticians and researchers using statistical method in resolving their research problems. While a broad spectrum of topics will be entertained, those with original contribution to the statistical science or those that illustrates novel applications of statistics in solving real-life problems will be prioritized. The scope includes, but is not limited to the following topics:  Official Statistics  Computational Statistics  Simulation Studies  Mathematical Statistics  Survey Sampling  Statistics Education  Time Series Analysis  Biostatistics  Nonparametric Methods  Experimental Designs and Analysis  Econometric Theory and Applications  Other Applications
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