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Adaptation of k-means to automated forecasting of poorly structured time series of economic dynamics
Published 2025-02-01“…We confirmed that use and integration of well-known clustering methods into the linear cellular automaton algorithm allows to identify patterns and improve the quality of the forecast. …”
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Methods for detection of crises in the economy in the early stages
Published 2017-10-01“…The object of the study was the crisis situation of the individual assets, as well as methods of detecting the crisis at an early stage.…”
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Marine soundscape forecasting: A deep learning-based approach
Published 2025-11-01“…Despite the rapid development of anomaly detection algorithms and deep-learning models for forecasting, their application to marine soundscapes remains unexplored. …”
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An integrated framework for multi-commodity agricultural price forecasting and anomaly detection using attention-boosted models
Published 2025-08-01“…The proposed models outperformed baseline methods by achieving lower forecasting and anomaly detection errors. …”
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Modeling and forecasting of egg production in india using time series models
Published 2021-12-01“…<p> <b>Results: </b>It is detected that Holt's Linear Trend Model is the best fit model for forecasting. …”
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Analyzing Taiwanese Traffic Patterns on Consecutive Holidays Through Forecast Reconciliation and Prediction-Based Anomaly Detection Techniques
Published 2025-01-01“…We propose a prediction-based detection method for identifying highway traffic anomalies using reconciled ordinary least squares (OLS) forecasts and bootstrap prediction intervals. …”
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Automated Detection of coronaL MAss Ejecta origiNs for Space Weather AppliCations (ALMANAC)
Published 2022-11-01“…This paper presents a method that detects and estimates the central coordinates of CME eruptions in Extreme Ultraviolet data, with the dual aim of providing an early alert, and giving an initial estimate of the CME direction of propagation to a CME geometrical model. …”
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Ensemble-based forecasting of wildfire potentials using relative index in Gangwon Province, South Korea
Published 2025-05-01“…The forecasting capabilities of individual and merged indices are evaluated using hit/miss metrics, specifically the probability of detection and false alarm ratio. …”
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Integrated Time Series Analysis, Clustering, and Forecasting for Energy Efficiency Optimization and Tariff Management
Published 2025-01-01“…The findings reinforce the importance of using machine learning techniques to improve tariff selection, anomaly detection, and demand forecasting, contributing to better energy management and efficiency.…”
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Evaluating LSTM Performance on Multivariate Time Series with One-Class SVM Outlier Detection
Published 2025-08-01“…Weekly sales forecasting plays a crucial role in retail business planning and inventory management.This study evaluates the prediction performance of a Long Short-Term Memory (LSTM) model for weekly sales forecasting after data preprocessing using standardization and outlier detection with One-Class Support Vector Machine (OCSVM) method. …”
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Forecasting the Detection of Lyman-alpha Forest Weak Lensing from the Dark Energy Spectroscopic Instrument and Other Future Surveys
Published 2025-01-01“…We show that spectral surveys with low density and high volume are promising candidates for forest weak lensing in addition to the high resolution data that have been considered in previous work. We present forecasts for future spectral surveys and show that with larger datasets a detection with signal to noise $>10$ will be possible.…”
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Optimising energy distribution and detecting vulnerabilities in networks using artificial intelligence
Published 2025-05-01“…Load forecasting methods, including neural networks, decision trees, and reinforcement learning, contributed to reducing energy consumption and preventing overloads. …”
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Simulation Study to Identify Factors Affecting the Performance of LSTM and XGBoost for Anomaly Detection on Labeled Time Series Data
Published 2025-08-01“…Both use a forecasting approach for anomaly detection. However, the limitations of both methods on anomalies, such as data length, labeling method, and number of anomalies have not been explored. …”
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Research Status and Prospect of Torsional Vibration Detection Methods for Rotating Machinery
Published 2021-12-01“…We introduce each method of these methods, espound in detail the woking principle, reaserch significance, practical application, advantages and disadvantages of each methods, and finally forecast the development trend of these methods. …”
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A real-time PCR method for rapid detection of Gymnodinium sanguineum
Published 2009-03-01“…For detecting the harmful algal bloom (HAB) species sensitively and rapidly, Gymnodinium sanguineum was taken as the object, and the rapid detection method- RFQ-PCR (real-time fluorescent quantitative polymerase chain reaction) technique was applied to the HAB species detection. …”
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A photovoltaic anomaly data identification method based on image feature detection
Published 2025-05-01“…This method maps numerical data to images, transforming the anomaly detection problem into an image processing problem. …”
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