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Records with Subject: Optimization
Showing records 1531 to 1555 of 1630. [First] Page: 1 59 60 61 62 63 64 65 66 Last
Estimation of Small-Scale Kinetic Parameters of Escherichia coli (E. coli) Model by Enhanced Segment Particle Swarm Optimization Algorithm ESe-PSO
Mohammed Adam Kunna Azrag, Jasni Mohamad Zain, Tuty Asmawaty Abdul Kadir, Marina Yusoff, Aqeel Sakhy Jaber, Hybat Salih Mohamed Abdlrhman, Yasmeen Hafiz Zaki Ahmed, Mohamed Saad Bala Husain
February 21, 2023 (v1)
Subject: Optimization
Keywords: algorithm, E. coli, estimation, kinetic parameters, Simulation
The ability to create “structured models” of biological simulations is becoming more and more commonplace. Although computer simulations can be used to estimate the model, they are restricted by the lack of experimentally available parameter values, which must be approximated. In this study, an Enhanced Segment Particle Swarm Optimization (ESe-PSO) algorithm that can estimate the values of small-scale kinetic parameters is described and applied to E. coli’s main metabolic network as a model system. The glycolysis, phosphotransferase system, pentose phosphate, the TCA cycle, gluconeogenesis, glyoxylate pathways, and acetate formation pathways of Escherichia coli are represented by the Differential Algebraic Equations (DAE) system for the metabolic network. However, this algorithm uses segments to organize particle movements and the dynamic inertia weight (ω) to increase the algorithm’s exploration and exploitation potential. As an alternative to the state-of-the-art algorithm, this adju... [more]
One-Layer Real-Time Optimization Using Reinforcement Learning: A Review with Guidelines
Ruan de Rezende Faria, Bruno Didier Olivier Capron, Maurício B. de Souza Jr., Argimiro Resende Secchi
February 21, 2023 (v1)
Subject: Optimization
Keywords: economic optimization, one-layer approach, process control
This paper reviews real-time optimization from a reinforcement learning point of view. The typical control and optimization system hierarchy depend on the layers of real-time optimization, supervisory control, and regulatory control. The literature about each mentioned layer is reviewed, supporting the proposal of a benchmark study of reinforcement learning using a one-layer approach. The multi-agent deep deterministic policy gradient algorithm was applied for economic optimization and control of the isothermal Van de Vusse reactor. The cooperative control agents allowed obtaining sufficiently robust control policies for the case study against the hybrid real-time optimization approach.
Deep Reinforcement Learning for Traffic Light Timing Optimization
Bin Wang, Zhengkun He, Jinfang Sheng, Yu Chen
February 21, 2023 (v1)
Subject: Optimization
Keywords: deep reinforcement learning, traffic light control
Existing inflexible and ineffective traffic light control at a key intersection can often lead to traffic congestion due to the complexity of traffic dynamics, how to find the optimal traffic light timing strategy is a significant challenge. This paper proposes a traffic light timing optimization method based on double dueling deep Q-network, MaxPressure, and Self-organizing traffic lights (SOTL), namely EP-D3QN, which controls traffic flows by dynamically adjusting the duration of traffic lights in a cycle, whether the phase is switched based on the rules we set in advance and the pressure of the lane. In EP-D3QN, each intersection corresponds to an agent, and the road entering the intersection is divided into grids, each grid stores the speed and position of a car, thus forming the vehicle information matrix, and as the state of the agent. The action of the agent is a set of traffic light phase in a signal cycle, which has four values. The effective duration of the traffic lights is... [more]
Optimization of Anti-Plugging Working Parameters for Alternating Injection Wells of Carbon Dioxide and Water
Kemin Li, Guangsheng Cao, Gaojun Shan, Ning Zhang, Xincheng Liu, Shengbo Zhai, Yujie Bai
February 21, 2023 (v1)
Subject: Optimization
Keywords: alternate injection of CO2 and water, hydrate freeze plugging, limit shut-in time
In the process of oilfield development, the use of CO2 can improve the degree of reservoir production. Usually, CO2 is injected alternately with water to expand the spread range of CO2, and CO2 presents a supercritical state in the formation conditions. In the process of alternating CO2 and water injection, wellbore freezing and plugging frequently occur. In order to determine the cause of freezing and plugging of injection wells, the supercritical CO2 flooding test area of YSL Oilfield in China is taken as an example to analyze the situation of freezing and plugging wells in the test area. The reasons for hydrate freezing and plugging are obtained, the distribution characteristics and sources of hydrate near the well are clarified, and a coupling model is established to calculate the limit injection velocity and limit shut-in time of CO2 and water alternate injection wells. The results show that the main reasons for freezing and plugging of supercritical CO2 water alternate injection... [more]
Dynamic Configuration Method of Flexible Workshop Resources Based on IICA-NS Algorithm
Xuan Su, Chaoyang Zhang, Chen Chen, Lei Fang, Weixi Ji
February 21, 2023 (v1)
Subject: Optimization
Keywords: bottleneck heuristic, dynamic resource configuration, flexible manufacturing shop, imperial competition algorithm, neighborhood structure
The optimal configuration of flexible workshop resources is critical to production efficiency, while disturbances pose significant challenges to the effectiveness of the configuration. Therefore, this paper proposes a hybrid-driven resource dynamic configuration model and an improved Imperialist Competitive Algorithm hybrid Neighborhood Search (IICA-NS) that incorporates domain knowledge to allocate resources in flexible workshops. First, a hybrid-driven configuration framework is proposed to optimize resource configuration strategies. Then, in the revolutionary step of the Imperialist Competitive Algorithm (ICA), the bottleneck heuristic neighborhood structure is adopted to retain the excellent genes in the imperial so that the updated imperial is closer to the optimal solution; And a population invasion strategy is proposed further to improve the searchability of the ICA algorithm. Finally, the simulation experiments are carried out through production examples on flexible workshop pr... [more]
Machine Learning with Gradient-Based Optimization of Nuclear Waste Vitrification with Uncertainties and Constraints
LaGrande Lowell Gunnell, Kyle Manwaring, Xiaonan Lu, Jacob Reynolds, John Vienna, John Hedengren
February 21, 2023 (v1)
Subject: Optimization
Keywords: constrained optimization, dynamic optimization, glass formulation, low-activity waste, Machine Learning, prediction uncertainty, process uncertainty, uncertainty quantification
Gekko is an optimization suite in Python that solves optimization problems involving mixed-integer, nonlinear, and differential equations. The purpose of this study is to integrate common Machine Learning (ML) algorithms such as Gaussian Process Regression (GPR), support vector regression (SVR), and artificial neural network (ANN) models into Gekko to solve data based optimization problems. Uncertainty quantification (UQ) is used alongside ML for better decision making. These methods include ensemble methods, model-specific methods, conformal predictions, and the delta method. An optimization problem involving nuclear waste vitrification is presented to demonstrate the benefit of ML in this field. ML models are compared against the current partial quadratic mixture (PQM) model in an optimization problem in Gekko. GPR with conformal uncertainty was chosen as the best substitute model as it had a lower mean squared error of 0.0025 compared to 0.018 and more confidently predicted a higher... [more]
The Feasibility Assessment of Power System Dispatch with Carbon Tax Considerations
Whei-Min Lin, Chia-Sheng Tu, Sang-Jyh Lin, Ming-Tang Tsai
February 21, 2023 (v1)
Subject: Optimization
Keywords: carbon tax, global warming, Particle Swarm Optimization, power system dispatch
Traditional economic dispatch methods, which are used to minimize fuel costs, have become inadequate because they do not consider the environmental impact of emissions in the optimization process. By taking into account the horizon year load and carbon taxes, this paper examines the operation and dispatch of power units in a power system. The objective function, including the cost of fuels and the cost of carbon taxes, is solved by the modified particle swarm optimization with time-varying acceleration coefficient (MPSO-TVAC) method under operational constraints. Based on different load scenarios, the influences of various carbon taxes for the dispatch of units are simulated and analyzed. The efficiency and ability of the proposed MPSO-TVAC method are demonstrated using a real 345KV system. Simulation results indicate that the average annual CO2 emissions are 0.36 kg/kwh, 0.41 kg/kwh, and 0.44 kg/kwh in 2012, 2017 and 2022, respectively. As the capacity of gas-fired plants was increase... [more]
Application of Beetle Colony Optimization Based on Improvement of Rebellious Growth Characteristics in PM2.5 Concentration Prediction
Yizhun Zhang, Qisheng Yan
February 21, 2023 (v1)
Subject: Optimization
Keywords: beetle swarm optimization, character decision, growth character, local optimum, rebellious character, test function
Aiming at the shortcomings of the beetle swarm algorithm, namely its low accuracy, easy fall into local optima, and slow convergence speed, a rebellious growth personality−beetle swarm optimization (RGP−BSO) model based on rebellious growth personality is proposed. Firstly, the growth and rebellious characters were added to the beetle swarm optimization algorithm to dynamically adjust the beetle’s judgment of the optimal position. Secondly, the adaptive iterative selection strategy is introduced to balance the beetles’ global search and local search capabilities, preventing the algorithm from falling into a locally optimal solution. Finally, two dynamic factors are introduced to promote the maturity of the character and further improve the algorithm’s optimization ability and convergence accuracy. The twelve standard test function simulation experiments show that RGP−BSO has a faster convergence speed and higher accuracy than other optimization algorithms. In the practical problem of P... [more]
Where Reinforcement Learning Meets Process Control: Review and Guidelines
Ruan de Rezende Faria, Bruno Didier Olivier Capron, Argimiro Resende Secchi, Maurício B. de Souza Jr
February 21, 2023 (v1)
Subject: Optimization
Keywords: imitation learning, Markov decision process, process optimization, transfer learning
This paper presents a literature review of reinforcement learning (RL) and its applications to process control and optimization. These applications were evaluated from a new perspective on simulation-based offline training and process demonstrations, policy deployment with transfer learning (TL) and the challenges of integrating it by proposing a feasible approach to online process control. The study elucidates how learning from demonstrations can be accomplished through imitation learning (IL) and reinforcement learning, and presents a hyperparameter-optimization framework to obtain a feasible algorithm and deep neural network (DNN). The study details a batch process control experiment using the deep-deterministic-policy-gradient (DDPG) algorithm modified with adversarial imitation learning.
Research on Parameter Matching of the Asymmetric Pump Potential Energy Recovery System Based on Multi-Core Parallel Optimization Method
Lixin Wei, Zhiqiang Ning, Long Quan, Aihong Wang, Youshan Gao
February 21, 2023 (v1)
Subject: Optimization
Keywords: energy recovery, multi-core CPU, multi-process parallel, serialization products, VAPP
Aiming at the parameters of the different displacements and related components of the variable-displacement asymmetric axial piston pump (VAPP) required by the energy-recovery system of excavator booms of different tonnages, a rapid multi-process parallel optimization method of complex hydraulic products based on a multi-core CPU was proposed for parameter matching. The parameter matching was used to reasonably select relevant parameters so that the excavator’s boom energy-recovery and utilization system can improve operational efficiency and energy-saving efficiency under the premise of satisfying the normal working conditions of the working mechanism, and achieving the purpose of serializing VAPP products. A multi-objective optimization model was put forward according to energy-saving efficiency and operational efficiency. First, the accuracy of the acceleration method of the CVODE, a solver for stiff and non-stiff ordinary differential equation (ODE) systems, was verified by a physi... [more]
Research on the Siting Model of Emergency Centers in a Chemical Industry Park to Prevent the Domino Effect
Kerang Cao, Linqi Liang, Yaru Liu, Liwei Wang, Kwang-Nam Choi, Jingyu Gao
February 21, 2023 (v1)
Subject: Optimization
Keywords: chemical industry park, emergency siting, multi-objective optimization, NSGA-II
A chemical industry park (CIP) has a wide variety of hazardous chemicals, and once an accident occurs, the level of danger increases geometrically, while the domino effect may bring devastating consequences. To improve the emergency rescue capability of a chemical park and prevent the domino effect, a certain number of emergency centers are built at sites near the park for the purpose of rapid emergency rescue and deployment of emergency supplies. Based on this, in our study, a siting model of the emergency center of the chemical park, which aims to prevent the domino effect, was constructed by considering the timeliness and safety, while adopting the prevention of the domino effect as a constraint. The NSGA-II algorithm is used to solve the siting model, and the CPLEX method is used for the comparison. This study combines the prevention of the domino effect with multi-objective optimization theory, which has a good and simple applicability for solving the considered problem and can ob... [more]
An Enhanced Evaporation Rate Water-Cycle Algorithm for Global Optimization
Abdelazim G. Hussien, Fatma A. Hashim, Raneem Qaddoura, Laith Abualigah, Adrian Pop
February 21, 2023 (v1)
Subject: Optimization
Keywords: global optimization, local escaping operator, water-cycle algorithm, WCA
Water-cycle algorithm based on evaporation rate (ErWCA) is a powerful enhanced version of the water-cycle algorithm (WCA) metaheuristics algorithm. ErWCA, like other algorithms, may still fall in the sub-optimal region and have a slow convergence, especially in high-dimensional tasks problems. This paper suggests an enhanced ErWCA (EErWCA) version, which embeds local escaping operator (LEO) as an internal operator in the updating process. ErWCA also uses a control-randomization operator. To verify this version, a comparison between EErWCA and other algorithms, namely, classical ErWCA, water cycle algorithm (WCA), butterfly optimization algorithm (BOA), bird swarm algorithm (BSA), crow search algorithm (CSA), grasshopper optimization algorithm (GOA), Harris Hawks Optimization (HHO), whale optimization algorithm (WOA), dandelion optimizer (DO) and fire hawks optimization (FHO) using IEEE CEC 2017, was performed. The experimental and analytical results show the adequate performance of the... [more]
A Multiple Solution Approach to Real-Time Optimization
Jack Speakman, Grégory François
February 20, 2023 (v1)
Subject: Optimization
Keywords: modifier adaptation, MSMA, multi-model, multiple solution, plant-model mismatch, real-time optimization
Modifier Adaptation (MA) is a method of real-time optimization (RTO) which modifies a single model to match the first order properties of the plant. Known uncertainties in the parameters of this model are discarded in favor of real-time measurements, but they can be used to quantify the mismatch between the plant and model. Using multi-model methods increases the computation time, but can improve rate of convergence of the RTO scheme. This article proposes a framework, known as multiple solution modifier adaptation (MSMA), which produces several models which are all modified in the same way as standard MA, each producing a potential solution to be applied to the plant. From this framework, three recommended schemes are proposed on how to select the operating point to be applied to the plant: (1) Selecting the solution based off the modifiers; (2) Selecting the mean solution from convex models; (3) Selecting the closest solution to the current operating point. Each of these methods have... [more]
Destabilization Mechanism and Stability Control of the Surrounding Rock in Stope Mining Roadways below Remaining Coal Pillars: A Case Study in Buertai Coal Mine
Qiang Fu, Ke Yang, Xiang He, Qinjie Liu, Zhen Wei, Yu Wang
February 20, 2023 (v1)
Subject: Optimization
Keywords: remaining coal pillar, stope mining roadway, stress transfer, support optimization, surrounding rock control
To study the stability control of stope mining roadways below remaining coal pillars, the present study investigates the destabilization mechanism of coal pillars and roadways in sections under the dual action of supporting pressure on the floor of the remaining coal pillar in the overlying coal seam and the mining at the working face of the lower coal seam and clarify the principle of surrounding rock stability control based on theoretical analysis, numerical simulation, and industrial testing. The results yielded the following findings. After the stope mining of the overlying coal seam working face, the stress transfer of the T-shaped remaining coal pillar significantly increased the vertical stress of the lower coal seam. The lateral support pressure generated by the stope mining at the lower coal seam working face further aggravated the stress concentration in the coal, leading to severe compression-shear failure of the surrounding rock. As the sectional coal pillar becomes wider,... [more]
A Modified Multiparameter Linear Programming Method for Efficient Power System Reliability Assessment
Jing Zuo, Sui Peng, Yan Yang, Zuohong Li, Zhengmin Zuo, Hao Yu, Yong Lin
February 20, 2023 (v1)
Subject: Optimization
Keywords: computational complexity, multiparameter linear programming, optimal power flow, power system reliability, state reduction
Power systems face adequacy risks because of the high integration of renewable energy. It is urgent to develop efficient methods for power system operational reliability assessment. Conventional power system reliability assessment methods cannot achieve real-time assessment of system risk because of the high computational complexity and long calculation time. The high computational complexity is mainly caused by a large number of optimal power flow (OPF) calculations. To reduce the computational complexity, this paper transfers the optimal power flow model as a multiparameter linear programming model. Then, the optimal power flow can be obtained by linear calculations. Furthermore, this paper proposes a state reduction method considering the importance index of transmission lines for further improving the calculation efficiency. Case studies are carried out on IEEE standard systems and a provincial power grid in China. Compared with the conventional reliability assessment method, the r... [more]
Thin-Film Carbon Nitride (C2N)-Based Solar Cell Optimization Considering Zn1−xMgxO as a Buffer Layer
Waqas Ahmad, Waqas Farooq, Adnan Daud Khan, Shayan Tariq Jan, Michał Jasiński, Zbigniew Leonowicz, Radomir Gono, Jan Petrov
February 17, 2023 (v1)
Subject: Optimization
Keywords: SCAPS-1D, thin-film solar cells, Zn1−xMgxO
Carbon nitride (C2N), a two-dimensional material, is rapidly gaining popularity in the photovoltaic (PV) research community owing to its excellent properties, such as high thermal and chemical stability, non-toxic composition, and low fabrication cost over other thin-film solar cells. This study uses a detailed numerical investigation to explore the influence of C2N-based solar cells with zinc magnesium oxide (Zn1−xMgxO) as a buffer layer. The SCAPS-1D simulator is utilized to examine the performance of four Mg-doped buffer layers (x = 0.0625, 0.125, 0.1875, and 0.25) coupled with the C2N-based absorber layer. The influence of the absorber and buffer layers’ band alignment, quantum efficiency, thickness, doping density, defect density, and operating temperature are analyzed to improve the cell performance. Based on the simulations, increasing the buffer layer Mg concentration above x = 0.1875 reduces the device performance. Furthermore, it is found that increasing the absorber layer th... [more]
Optimization of Glycerol Extraction of Chlorogenic Acid from Honeysuckle by Response Surface Methodology
Mingsheng Luo, Xinyue Liu, Zhijun Zhao, Fengli Wang, Changke Shao
February 17, 2023 (v1)
Subject: Optimization
Keywords: chlorogenic acid, glycerol, honeysuckle, response surface methodology, ultrasonic assisted extraction
Using honeysuckle as raw material, chlorogenic acid (CGA) was extracted with different alcohols. Based on the single-factor experiment design, the relationship between each parameter and the response value was explored by Box−Behnken method to optimize the process conditions. Best extraction results were obtained under the conditions of solid-to-liquid ratio of 1:20, the ultrasonic time of 40 min, the ultrasonic vibrator power of 240 w, and the CGA extraction rate of 2.98%. The experimental data show that the extraction rate of CGA is related to the length of the alcohol carbon chain and the number of hydroxyl groups in the extractant. The results from this work can provide technical basis for the safe and efficient production of CGA from honeysuckle.
Review of Latest Advances in Nature-Inspired Algorithms for Optimization of Activated Sludge Processes
Malini Deepak, Rabee Rustum
February 17, 2023 (v1)
Subject: Optimization
Keywords: activated sludge process, Artificial Intelligence, bio-inspired algorithms, computational intelligence, evolutionary algorithms, nature-inspired algorithms, Optimization, swarm intelligence, wastewater treatment
The activated sludge process (ASP) is the most widely used biological wastewater treatment system. Advances in research have led to the adoption of Artificial Intelligence (AI), in particular, Nature-Inspired Algorithm (NIA) techniques such as Genetic Algorithms (GAs) and Particle Swarm Optimization (PSO) to optimize treatment systems. This has aided in reducing the complexity and computational time of ASP modelling. This paper covers the latest NIAs used in ASP and discusses the advantages and limitations of each algorithm compared to more traditional algorithms that have been utilized over the last few decades. Algorithms were assessed based on whether they looked at real/ideal treatment plant (WWTP) data (and efficiency) and whether they outperformed the traditional algorithms in optimizing the ASP. While conventional algorithms such as Genetic Algorithms (GAs), Particle Swarm Optimization (PSO), and Ant Colony Optimization (ACO) were found to be successfully employed in optimizatio... [more]
Intelligent Fault Diagnosis Method for Gearboxes Based on Deep Transfer Learning
Zhenghao Wu, Huajun Bai, Hao Yan, Xianbiao Zhan, Chiming Guo, Xisheng Jia
February 17, 2023 (v1)
Subject: Optimization
Keywords: deep transfer learning, fault diagnosis, gearbox, variational mode decomposition, whale optimization algorithm
The complex operating environment of gearboxes and the easy interference of early fault feature information make fault identification difficult. This paper proposes a fault diagnosis method based on a combination of whale optimization algorithm (WOA), variational mode decomposition (VMD), and deep transfer learning. First, the VMD is optimized by using the WOA, and the minimum sample entropy is used as the fitness function to solve for the K value and penalty parameter α corresponding to the optimal decomposition of the VMD, and the correlation coefficient is used to reconstruct the signal. Second, the reconstructed signal after reducing noise is used to generate a two-dimensional image using the continuous wavelet transform method as the transfer learning target domain data. Finally, the AlexNet model is used as the transfer object, which is pretrained and fine-tuned with model parameters to make it suitable for early crack fault diagnosis in gearboxes. The experimental results show t... [more]
Parameter Optimization and Testing of a Conveying and Soil-Removing Device for Tiger Nut (Cyperus esculentus) Mechanical Harvesting
Jiangtao Qi, Minghao Pei, Za Kan, Hewei Meng
February 17, 2023 (v1)
Subject: Optimization
Keywords: conveying and soil-removing, harvesting, parameter optimization, tiger nut
Aimed at solving the large power consumption and high operating cost problems associated with the process of harvesting tiger nuts, the use of a conveying and soil-removing device which removes sandy soil while conveying tiger nuts was proposed. The device was numerically simulated with and without vibration using EDEM software. The results showed that the vibrating force was more conducive to the complete removal of sandy soil and the effective conveyance of tiger nuts. The simulation testing was carried out using spiral speed, vibration amplitude, and vibration frequency as the independent variables and conveyance efficiency, sandy soil removal rate, etc., as the dependent variables. The test results showed that the optimal parameter combination was a spiral speed of 107 r/min, a vibration amplitude of 8.5 mm, and a vibration frequency of 10.7 Hz, under which the theoretical value of conveyance efficiency was 80.39%, the sandy soil removal rate was 84.61%, and the variation coefficie... [more]
Optimization and Validation of an Extraction Method for Endosulfan Lactone on a Solid Substrate
Paola T. Vázquez-Villegas, Rocío Meza-Gordillo, María C. Luján-Hidalgo, Abumalé Cruz-Salomón, Víctor M. Ruíz-Valdiviezo, Federico A. Gutiérrez-Miceli, Juan J. Villalobos-Maldonado, Joaquín A. Montes-Molina
November 6, 2022 (v1)
Subject: Optimization
Keywords: endosulfan lactone, HPLC UV-VIS, Optimization, response surface, solvent extraction, ultrasound
Endosulfan lactone is a metabolite obtained from the biological oxidation of the insecticide endosulfan by action of the microorganisms present in the soil. This metabolite is more toxic and persistent than the parent compound. Therefore, it is extremely important to be able to determine the presence of this metabolite in the soil. However, accessible methods for extraction of endosulfan lactone in soil were not found in published literature. For this reason, the aim of this study was to evaluate two conventional methods of liquid−solid extraction for the determination of endosulfan lactone in solid substrate using two solvents (ethyl acetate and acetonitrile) and HPLC UV-VIS. The acetonitrile and rotary agitation extraction method was the one with the highest efficiency (97%), optimized using a factorial 32 response surface design, and validated in terms of linearity and precision. The linearity shown was r > 0.999 in a wide spike level (0.15−100 mg kg−1), with the detection limit (DL... [more]
Optimisation of Energy Use in Bioethanol Production Using a Control Algorithm
Jarosław Knaga, Stanisław Lis, Sławomir Kurpaska, Piotr Łyszczarz, Marcin Tomasik
November 6, 2022 (v1)
Subject: Optimization
Keywords: bioethanol, computer modelling and simulation, energy use optimisation, process control
In this work, the possibility of limiting energy consumption in the manufacturing process of bioethanol to obtain biofuel was analysed. For this purpose, a control algorithm has been optimised while retaining the good quality of the control signals. New in this study is the correlation of the control algorithm not only with the signal’s quality, but also with the energy consumption in such an energy-intensive process as rectification. The rectification process in a periodic production system has been researched. The process was modelled on a test station with the distillation mixture capacity of 25 dm3. For the optimization, the following control algorithms have been applied: relay, PID and PID after modification to I-PD. The simulation was carried out on a transfer function model of the plant that has been verified on a real object, a rectification column. The simulations of energy consumption and control signal’s quality have been carried out in the Matlab®-Simulink environment after... [more]
Energy Saving for Tissue Paper Mills by Energy-Efficiency Scheduling under Time-of-Use Electricity Tariffs
Zhiqiang Zeng, Xiaobin Chen, Kaiyao Wang
October 31, 2022 (v1)
Subject: Optimization
Keywords: energy saving, multi-objective optimization, time-of-use electricity tariffs, tissue paper mill
Environmental concerns and soaring energy prices have brought huge pressure of energy saving and emission reduction to tissue paper mills. Electricity is one of the main energy sources of tissue paper mills. The production characteristics of tissue paper mills make it easy to decrease energy cost by using time-of-use (TOU) electricity tariffs. This study investigates the bi-objective energy-efficiency scheduling of tissue paper mills under time-of-use electricity tariffs, the objectives of which are makespan and energy cost. First, considering the processing energy cost, setup energy cost, and transportation energy cost, an energy cost model of a tissue paper mill under TOU electricity tariffs is established. Second, the energy-efficiency scheduling model under TOU electricity tariffs is built based on the energy cost model. Finally, on the basis of decomposition and teaching−learning optimization, this study proposes a novel multi-objective evolutionary algorithm and further combined... [more]
Matching Optimization of a Mixed Flow Pump Impeller and Diffuser Based on the Inverse Design Method
Mengcheng Wang, Yanjun Li, Jianping Yuan, Fareed Konadu Osman
October 30, 2022 (v1)
Subject: Optimization
Keywords: diffuser, flow field, impeller, inverse design method, matching optimization
When considering the interaction between the impeller and diffuser, it is necessary to provide logical and systematic guidance for their matching optimization. In this study, the goal was to develop a comprehensive matching optimization strategy to optimize the impeller and diffuser of a mixed flow pump. Some useful tools and methods, such as the inverse design method, computational fluid dynamics (CFD), design of experiment, surrogate model, and optimization algorithm, were used. The matching optimization process was divided into two steps. In the first step, only the impeller was optimized. Thereafter, CFD analysis was performed on the optimized impeller to get the circulation and flow field distribution at the outlet of the impeller. In the second step of optimization, the flow field and circulation distribution at the inlet of the diffuser were set to be the same as the optimized impeller outlet. The results show that the matching optimization strategy proposed in this study is eff... [more]
Forecasting Quantitative Risk Indicators of Investors in Projects of Biohydrogen Production from Agricultural Raw Materials
Anatoliy Tryhuba, Taras Hutsol, Szymon Glowacki, Inna Tryhuba, Sylwester Tabor, Dariusz Kwasniewski, Dmytro Sorokin, Serhii Yermakov
October 30, 2022 (v1)
Subject: Optimization
Keywords: biohydrogen, decarbonization, Hydrogen, market value
Hydrogen is increasingly considered as an environmentally friendly energy source as it stores a large amount of chemical energy per unit mass (142 MJ·kg−1) that can be released without the emission of combustion by-products. The presented research is based on simulation modeling of biohydrogen production projects from agricultural waste. Based on the probability theory and mathematical statistics, the models of the variable market value of biohydrogen and natural gas are substantiated. The results of the research indicate that in 2019, projects regarding the production of biohydrogen from agricultural raw materials were mostly unprofitable for the investors. However, starting in 2030, the forecasted return on investment in biohydrogen production projects from agricultural raw materials indicates that such projects will be profitable for investors, and the number and scale of such projects will significantly increase worldwide.
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