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Performance Measurement with High-Performance Computer Using Hw-Ga Anomaly-Detection Algorithms for Streaming Data
Computer Science-Agh ; 23(3):397-410, 2022.
Article in English | Web of Science | ID: covidwho-2090824
ABSTRACT
Anomaly detection for streaming real-time data is very important;more signifi-cant is the performance of an algorithm in order to meet real-time requirements. Anomaly detection is very crucial in every sector because, by knowing what is going wrong with data/digital systems, we can make decisions to help in every sector. Dealing with real-time data requires speed;for this reason, the aim of this paper is to measure the performance of our proposed Holt-Winters gene-tic algorithm (HW-GA) as compared to other anomaly-detection algorithms with a large amount of data as well as to measure how other factors such as visualization and the performance of the testing environment affect the algori-thm's performance. The experiments will be done in R with different data sets such as the as real Covid-19 and IoT sensor data that we collected from Smart Agriculture Libelium sensors and e-dnevnik 1 as well as three benchmarks from the Numenta data sets. The real data has no known anomalies, but the ano-malies are known in the benchmark data;this was done in order to evaluate how the algorithm works in both situations. The novelty of this paper is that the performance will be tested on three different computers (in which one is a high-performance computer);also, a large amount of data will be used for our testing, as will how the visualization phase affects the algorithm's performance.
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Full text: Available Collection: Databases of international organizations Database: Web of Science Language: English Journal: Computer Science-Agh Year: 2022 Document Type: Article

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Full text: Available Collection: Databases of international organizations Database: Web of Science Language: English Journal: Computer Science-Agh Year: 2022 Document Type: Article