Governments and industries are developing aggressive policies to reduce carbon emissions and shift from fossil fuels to renewable energy. On the other hand, industries struggle to reduce energy consumption and depend on production lot sizes to control energy requirements. In this regard, energy-efficient processing through CNC machine tools can potentially influence energy demand and requires energy-aware power consumption strategies for machining processes. For manufacturing a single product, predicting energy demand can be decisive in determining parametric control and other factors. Previously analytical models have been largely used to model machining requirements and energy demand. However, these models largely depend on parameterization and do not facilitate the integration of external sub-systems. Therefore, in this paper, an artificial intelligence-based power reduction strategy is developed and implemented on single material (Inconel 718), four control parameters (cutting speed, feed rate, depth of cut and flow rate) and two sub-systems (minimum quantity lubrication (MQL) and nanofluids-based minimum quantity lubrication (NF-MQL)). The paper employs four machine learning algorithms,' K-Nearest Neighbor', 'Gaussian Regression', 'Decision Tree', and 'Logistic Regression', to evaluate their functionality in predicting power consumption (Pc) of CNC machining systems using a real experimental data set. As per evaluation based on five performance metrics (, , , , and ), 'Decision Tree' has achieved the most accurate power consumption predictions. The comparative results highlight 'Decision Tree' as the most better predictor with the optimal max_depth of 2 showing Pc MQL R of 0.915 and Pc NF-MQL R of 0.931.
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http://dx.doi.org/10.1016/j.heliyon.2024.e34836 | DOI Listing |
Phys Chem Chem Phys
March 2025
Technical University of Darmstadt, Electronic Structure of Materials, Darmstadt, Germany.
Defect chemistry is the classical approach to evaluate point-defect concentrations in solids depending on the chemical activity of the ( - 1) of constituents by evaluating the mass action laws of a number of defect reactions conserving species, lattice sites, and charge. In an alternative approach, formation energies of individual defects can be calculated to determine the dependence on the Fermi level and on the chemical potentials of the reservoirs. This contribution provides the quantitative relationship between the two approaches, offering the opportunity to compare calculated defect formation energies with experimentally determined quantities.
View Article and Find Full Text PDFThree hydroxyl-containing cationic surfactants are synthesized and characterized by FTIR and HNMR, and their thermal stability is tested and analyzed. The surface activity, adsorption and aggregation behavior of the synthesized target product were investigated by testing its contact angle, static surface tension and dynamic surface tension. As the number of hydroxyl groups increases, the maximum adsorption amount ( ) of molecules at the interface gradually decreases, and the minimum area occupied by each molecule ( ) increases, suggesting that the introduction of hydroxyl groups weakens the interfacial accumulation ability between molecules and increases the hydrophilicity.
View Article and Find Full Text PDFEnviron Monit Assess
March 2025
Environmental Hydrology Division, National Institute of Hydrology, Roorkee, Uttarakhand, 247667, India.
The Himalayan rivers are particularly vulnerable to regional climate changes and anthropogenic influences, which can significantly alter both water quality and quantity, jeopardizing the fragile river ecosystems. This study investigates the hydrochemical characteristics of the Song River, a tributary of River Ganga focusing on non-point source (NPS) pollution, during the period June 2022 to November 2023. Monitoring of river discharge was carried out water samples were collected weekly during the monsoon (June to September), bi-weekly in the post-monsoon (October & November), and monthly during lean periods (December-May) from three monitoring stations.
View Article and Find Full Text PDFJ Gen Intern Med
March 2025
Center of Innovations in Chronic Complex Healthcare, Edward Hines Jr VA Medical Center Hines, Hines, IL, USA.
Background: Team-based primary care has become the norm within many large healthcare systems; however, limited guidance exists on how to optimally staff primary care teams in relationship to healthcare.
Objective: This paper examines the associations between variations in team staffing configurations on primary care access and clinical quality.
Design: Observational study linking national Veterans Health Administration (VHA) data from February 2020 on primary care team staffing configurations to data on access to and quality of care the teams delivered.
Front Aging Neurosci
February 2025
Zhengzhou First People's Hospital, Zhengzhou, China.
Objective: To assess the therapeutic effect of tDCS on cognitive function in patients with Parkinson's disease.
Methods: From the start of the library's construction until June 24, 2024, we searched the following databases for literature: PubMed, Embase, Web of Science, Cochrane Library, China National Knowledge Infrastructure (CNKI), Wanfang, China Science and Technology Journal Database (VIP), and China Biomedical Literature Database (CBM). We also looked through the references in the articles.
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