Treffer: Analyzing Uncertain Time Series Temperature Data for Forecasting and Streaming Using EDA‐ LSTM Model

Title:
Analyzing Uncertain Time Series Temperature Data for Forecasting and Streaming Using EDA‐ LSTM Model
Source:
Internet Technology Letters ; volume 8, issue 5 ; ISSN 2476-1508 2476-1508
Publisher Information:
Wiley
Publication Year:
2024
Collection:
Wiley Online Library (Open Access Articles via Crossref)
Document Type:
Fachzeitschrift article in journal/newspaper
Language:
English
DOI:
10.1002/itl2.623
Accession Number:
edsbas.F54331C
Database:
BASE

Weitere Informationen

Time series data generated by IoT devices are called uncertain data, and streaming them is difficult since they have uncertain values and flow. The dataset is time series and big data since it is increasing continuously. An enormous amount of data are analyzed to predict the abnormalities in the climate or the environment. At the same time, the monitoring and generating process should be continuous because discontinuity in data generation will not provide accurate conditions. Earlier works focused on the device status detection process and intimate, where the process cannot continue where the faulty device is located. This article carries out the entire process in two phases: (i) Investigate the status of the IoT devices to replace or rectify the issues that occur in the devices and continue the same process at the exact location. (ii) Pre‐process the data using exploratory data analytics and analyze and predict the IoT‐Bigdata using a robust machine learning algorithm, Long‐Short‐Term‐Memory. The proposed machine learning algorithms are implemented in Python with environmental datasets to predict abnormalities. The experimental results help verify the algorithms' efficiency and compare them with similar methods to evaluate the performance. From the comparison, it is identified that the proposed algorithms outperform the others.