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The energy efficiency analysis of sorghum waste biomass grown in a temperate climate

2025, Czekała, Wojciech, Frankowski, Jakub, Sieracka, Dominika, Pochwatka, Patrycja, Kowalczyk-Juśko, Alina, Witaszek, Kamil, Dudnyk, Alla, Zielińska, Aleksandra, Wisła-Świder, Anna, Dach, Jacek

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Wear Detection of Extruder Elements Based on Current Signature by Means of a Continuous Wavelet Transform

2023, Danielak, Marek, Witaszek, Kamil, Ekielski, Adam, Żelaziński, Tomasz, Dudnyk, Alla, Durczak, Karol

Assessing the wear of components in a single-screw extruder and its condition during the process is difficult. In this context, wavelet analysis was used to investigate the wear condition of extruder elements, which yielded data on current waveforms obtained from 1 kHz frequency converters. To date, no tests of this type have been conducted on single-screw food extruders, which further emphasizes the relevance of the research undertaken by the authors. Experimental tests have been conducted to verify the hypothesis that it is possible to assess the level of wear of the working elements of an extruder by monitoring the variations in the frequencies on the current spectrum using wavelet analysis tools. The root mean square (RMS) values of the current were compared for two configurations of the working elements of the device, i.e., new and used. Observation of the frequency variations of the current spectrum values using wavelet analysis tools can provide valuable information on the technical condition of the working elements of an industrial extruder. Therefore, they can indicate the need for prompt replacement of friction elements in order to improve the efficiency and performance of the machine.

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Smart Resource Management and Energy-Efficient Regimes for Greenhouse Vegetable Production

2025, Dudnyk, Alla, Pasichnyk, Natalia, Yakymenko, Inna, Lendiel, Taras, Witaszek, Kamil, Durczak, Karol, Czekała, Wojciech

Greenhouse vegetable production faces significant challenges due to the non-stationary and nonlinear dynamics of the cultivation environment, which demand adaptive and intelligent control strategies. This study presents an intelligent control system for greenhouse complexes based on artificial neural networks and fuzzy logic, optimized using genetic algorithms. The proposed system dynamically adjusts PI controller parameters to maintain optimal microclimatic conditions, including temperature and humidity, enhancing resource efficiency. Comparative analyses demonstrate that the genetic algorithm-based tuning outperforms traditional and fuzzy adaptation methods, achieving superior transient response with reduced overshoot and settling time. Implementation of the intelligent control system results in energy savings of 10–12% compared to conventional stabilization algorithms, while improving decision-making efficiency for electrotechnical subsystems such as heating and ventilation. These findings support the development of resource-efficient cultivation regimes that reduce energy consumption, stabilize agrotechnical parameters, and increase profitability in greenhouse vegetable production. The approach offers a scalable and adaptable solution for modern greenhouse automation under varying environmental conditions.

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Using Neural Networks to Identify Technological Stress Using the Example of Crop Compaction

2024, Kiktev, Nikolay, Dudnyk, Alla, Opryshko, Oleksiy, Komarchuk, Dmytro, Witaszek, Kamil Krzysztof