A Review of Automation and Sensors: Parameters Control of Thermal Treatments for Electricity Generation DOI Open Access

William Gouvêa Buratto,

Rafael Ninno Muniz, Ademir Nied

et al.

Published: Jan. 15, 2024

This review delves into the critical role of automation and sensor technologies in optimizing parameters for thermal treatments within electricity power generation. The demand efficient sustainable generation has led to a significant reliance on plants. However, ensuring precise control over these remains challenging, necessitating integration advanced systems. paper evaluates pivotal aspects automation, emphasizing its capacity streamline operations, enhance safety, optimize energy efficiency treatment processes. Additionally, it highlights indispensable sensors monitoring regulating crucial such as temperature, pressure, flow rates. These enable real-time data acquisition, facilitating immediate adjustments maintain optimal operating conditions prevent system failures. It explores recent technological advancements, including machine learning algorithms IoT integration, which have revolutionized capabilities control. Incorporating innovations significantly improved precision adaptability systems, resulting heightened performance reduced environmental impact. underscores imperative nature generation, their enhancing operational efficiency, reliability, advancing sustainability

Language: Английский

Wind speed short-term prediction using recurrent neural network GRU model and stationary wavelet transform GRU hybrid model DOI
Darío Gerardo Fantini, Reginaldo Nunes da Silva, Mario Siqueira

et al.

Energy Conversion and Management, Journal Year: 2024, Volume and Issue: 308, P. 118333 - 118333

Published: April 11, 2024

Language: Английский

Citations

16

Data driven net load uncertainty quantification for cloud energy storage management in residential microgrid DOI Open Access
Vikash Kumar Saini, Ameena Saad Al‐Sumaiti, Rajesh Kumar

et al.

Electric Power Systems Research, Journal Year: 2023, Volume and Issue: 226, P. 109920 - 109920

Published: Oct. 14, 2023

Language: Английский

Citations

20

Artificial Intelligence aided pharmaceutical engineering: Development of hybrid machine learning models for prediction of nanomedicine solubility in supercritical solvent DOI
Chunchao Chen

Journal of Molecular Liquids, Journal Year: 2024, Volume and Issue: 397, P. 124127 - 124127

Published: Jan. 26, 2024

Language: Английский

Citations

7

A fuzzy time series forecasting model with both accuracy and interpretability is used to forecast wind power DOI
Xinjie Shi, Jianzhou Wang, Bochen Zhang

et al.

Applied Energy, Journal Year: 2023, Volume and Issue: 353, P. 122015 - 122015

Published: Oct. 4, 2023

Language: Английский

Citations

13

Short-term wind power forecasting based on multi-scale receptive field-mixer and conditional mixture copula DOI
Jinchang Li, Jiapeng Chen, Z. Q. Chen

et al.

Applied Soft Computing, Journal Year: 2024, Volume and Issue: 164, P. 112007 - 112007

Published: July 17, 2024

Language: Английский

Citations

5

Implementing and tuning machine learning-based models for description of solubility variations of nanomedicine in supercritical solvent for development of green processing DOI Creative Commons
Ahmad J. Obaidullah

Case Studies in Thermal Engineering, Journal Year: 2023, Volume and Issue: 49, P. 103200 - 103200

Published: June 17, 2023

Determination of drug solubility in supercritical solvents such as CO2 has been great importance for preparation nanomedicines. This study implements and tunes several machine learning models to describe the medicine density solvent at various pressure temperature. The dataset used this consisted input variables, temperature, pressure. methods AdaBoost algorithm boost performance base regression predicting mole fractions rivaroxaban SC-CO2 were developed. include Theil-Sen Regression (TSR), Gaussian Process (GPR), Automatic Relevance (ARD), Linear (LR). We employ Hunter-Prey Optimization technique tune hyper-parameters these models. results indicated that boosted outperform their counterparts. For fraction predictions, with ARD achieves an R2 value 0.95986, while GPR obtains score 0.99817. impressive 0.99906. Accordingly, is best model both outputs. These demonstrate strength enhancing predictive accuracy chemical properties.

Language: Английский

Citations

11

Futuristic Streamflow Prediction Based on CMIP6 Scenarios Using Machine Learning Models DOI
Basir Ullah, Muhammad Fawad, Afed Ullah Khan

et al.

Water Resources Management, Journal Year: 2023, Volume and Issue: 37(15), P. 6089 - 6106

Published: Oct. 26, 2023

Language: Английский

Citations

11

An integrated development environment based situational awareness for operational reliability evaluation in wind energy systems incorporating uncertainties DOI
Rohit Kumar, Sudhanshu Mishra, Dusmanta Kumar Mohanta

et al.

Electric Power Systems Research, Journal Year: 2024, Volume and Issue: 233, P. 110467 - 110467

Published: May 17, 2024

Language: Английский

Citations

4

Wind power data cleaning using RANSAC-based polynomial and linear regression with adaptive threshold DOI Creative Commons

Haipeng Yang,

Jie Tang,

Wu Shao

et al.

Scientific Reports, Journal Year: 2025, Volume and Issue: 15(1)

Published: Feb. 11, 2025

As the global demand for clean energy continues to rise, wind power has become one of most important renewable sources. However, data often contains a high proportion dense anomalies, which not only significantly affect accuracy forecasting models but may also mislead grid scheduling decisions, thereby jeopardizing security. To address this issue, paper proposes an adaptive threshold robust regression model (RPR model) based on combination Random Sample Consensus (RANSAC) algorithm and polynomial linear cleaning. The successfully captures nonlinear relationship between speed by extending features power, enabling handle nonlinearity. By combining RANSAC regression, is constructed tackle anomalous enhance During cleaning process, first fits raw randomly selecting minimal sample set, then dynamically adjusts decision thresholds median residuals absolute deviation (MAD), ensuring effective identification data. model's robustness allows it maintain efficient performance even with data, addressing limitations existing methods when handling densely distributed anomalies. effectiveness innovation proposed method were validated applying real from farm operated Longyuan Power. Compared other commonly used methods, such as Bidirectional Change Point Grouping Quartile Statistical Model, Principal Contour Image Processing DBSCAN Clustering Support Vector Machine (SVM) experimental results showed that delivered best in improving quality. Specifically, reduced average error (MAE) 72.1%, higher than reductions observed (ranging 37.3 52.7%). Moreover, effectively prediction Convolutional Neural Network (CNN) + Gated Recurrent Unit (GRU) model, accuracy. study innovative significant application potential. It provides new approach cleaning, applicable conventional scenarios low proportions complex datasets

Language: Английский

Citations

0

Optimization of solar and wind power plants production through a parallel fusion approach with modified hybrid machine and deep learning models DOI Creative Commons
Muhammad Abubakar, Yanbo Che, Zafar Ahsan

et al.

Intelligent Data Analysis, Journal Year: 2025, Volume and Issue: unknown

Published: Feb. 16, 2025

Artificial Intelligence (AI) is becoming increasingly indispensable across diverse domains as technology rapidly advances. As traditional energy sources dwindle, there's a noticeable pivot towards renewable (RES). However, to effectively meet demands, integrating these RES into smart grids bolster efficiency imperative. Despite the transition, ongoing technical challenges persist, specifically in accurately predicting and optimizing grid parameters. To tackle hurdles enhance efficiency, various AI techniques are being harnessed. This study leverages real-time generation data (MWh) from solar wind plants over year, dependent on parameters such POA speed, respectively. Prediction outcomes derived using three machine learning (ML) models (XGBoost, CatBoost, LightGBM) deep (DL) (LSTM, BiLSTM, GRU). From individual models, two hybrid ML DL developed, yielding promising results. Subsequently, further refined through parallel fusion approach (PFA), resulting heightened accuracy reliability. The implementation of this technique notably reduces error rates 15.05% for ML, 19.18% DL, 8.1432% PFA. methodology holds substantial potential future research endeavors, supplementing existing enhanced efficiency.

Language: Английский

Citations

0