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Records with Subject: Optimization
Showing records 1231 to 1255 of 1630. [First] Page: 1 47 48 49 50 51 52 53 54 55 Last
Development of Future Compact and Eco-Friendly HVDC Gas Insulated Systems: Test Verification of Shape-Optimized DC Spacer Models
Haoluan Li, Nabila Zebouchi, Manu Haddad, Alistair Reid, Egbert Ekkel.
February 24, 2023 (v1)
Subject: Optimization
Keywords: C4-PFN, CF3I, GIL, GIS, HVDC, shape optimization, spacer, tests verification.
Spacers for the HVDC GIS/GIL play an important role in mechanically supporting conductors and separating compartments. At the same time, their insulation performance affects the stability and safety of system operation. Design rules and knowledge specific to AC spacers do not apply to those of DC spacers. Considering the shape influence on the surface electric field intensity of the spacer under HVDC applied voltage, as determined in our previous work, an optimized shape of a spacer model based on finite element electric field calculations and using standard HVAC alumina filled epoxy material and two novel types of materials were studied. The simulation’s results show that the DC shape optimization of the spacers can effectively reduce the electric field magnitudes along the spacer under different temperature gradients. To verify practically these findings, this paper presents the reduced scale gas insulated prototype that was constructed, the optimized DC spacers that were fabricated... [more]
Optimization of a Solar Water Pumping System in Varying Weather Conditions by a New Hybrid Method Based on Fuzzy Logic and Incremental Conductance
Abdelilah Hilali, Najib El Ouanjli, Said Mahfoud, Ameena Saad Al-Sumaiti, Mahmoud A. Mossa.
February 24, 2023 (v1)
Subject: Optimization
Keywords: centrifugal water pump, FL-INC, MPPT, optimization algorithm, SEPIC converter, solar water pumping system.
The present work consists of developing a new hybrid FL-INC optimization algorithm for the solar water pumping system (SWPS) through a SEPIC converter whose objective is to improve these performances. This technique is based on the combination of the fuzzy logic of artificial intelligence and the incremental conductance (INC) technique. Indeed, the introduction of fuzzy logic to the INC algorithm allows the extraction of a maximum amount of power and an improvement in the efficiency of the SWPS. The performance of the system through the SEPIC converter is compared with those of the direct coupling to show the interest of the indirect coupling, which requires an adaptation stage driven by an optimal control algorithm. In addition, a comparative analysis between the proposed hybrid algorithm and the conventional optimization techniques, namely, P&O and INC Modified (M-INC), was carried out to confirm improvements related to the SWPS in terms of efficiency, tracking speed, power quality,... [more]
Optimizing Recloser Settings in an Active Distribution System Using the Differential Evolution Algorithm
Siyabonga Brian Gumede, Akshay Kumar Saha.
February 24, 2023 (v1)
Subject: Optimization
Keywords: differential evolution algorithm, operating time, recloser.
A recloser requires a fast operating time in the first shot to optimally clear a temporary fault. The operating time is dependent on the time-dial, the pick-up settings, and the fault current. The recloser detects the fault current from the grid supply; however, the connection of the generators in the distribution system can contribute to the fault current. Depending on the location of the generators and the direction of the current, the fault current can decrease and cause an increase in the operating time. Therefore, the optimal settings that can minimize the operating time may need to be determined. This paper simulates the behavior of a recloser in its first shot for clearing a temporary fault and tests its performance in an active distribution system that has two types of distributed generators. It then uses the differential evolution algorithm to find the optimal settings in the active distribution voltage conditions. It also applies modifications to the differential evolution al... [more]
Research on Performance Optimization of Gravity Heat Pipe for Mine Return Air
Yu Zhai, Xu Zhao, Zhifeng Dong.
February 24, 2023 (v1)
Subject: Optimization
Keywords: entransy dissipation thermal resistance, gravity heat pipe, heat exchange unit, heat transfer, mine return air, parameter optimizing, waste heat resource.
The mine return air flow has the characteristics of basically constant temperature and humidity all year round and is a high-quality waste heat resource. Its direct discharge not only wastes energy but also causes environment pollution. It has important economic value and application prospect to solve the problem of shaft antifreeze using new technology to recover the waste heat of mine return air. Gravity heat pipe is widely used in the heat recovery of mine return air. Its heat transfer process is a complex process with multiple parameters. The current research focuses on the influence of a single factor on heat transfer, which has many limitations. To analyze the effects of different parameters on the heat recovery effect of gravity heat pipe in mine return air and to optimize heat pipe heat exchanger parameters in the heat exchange system, mathematical models of gas−water countercurrent heat and mass transfer, entransy dissipation and exergy efficiency were established in this pape... [more]
Stochastic Operation Optimization of the Smart Savona Campus as an Integrated Local Energy Community Considering Energy Costs and Carbon Emissions
Marialaura Di Somma, Amedeo Buonanno, Martina Caliano, Giorgio Graditi, Giorgio Piazza, Stefano Bracco, Federico Delfino.
February 24, 2023 (v1)
Subject: Optimization
Keywords: integrated local energy community, multi-objective approach, sector coupling, stochastic operation optimization.
Aiming at integrating different energy sectors and exploiting the synergies coming from the interaction of different energy carriers, sector coupling allows for a greater flexibility of the energy system, by increasing renewables’ penetration and reducing carbon emissions. At the local level, sector coupling fits well in the concept of an integrated local energy community (ILEC), where active consumers make common choices for satisfying their energy needs through the optimal management of a set of multi-carrier energy technologies, by achieving better economic and environmental benefits compared to the business-as-usual scenario. This paper discusses the stochastic operation optimization of the smart Savona Campus of the University of Genoa, according to economic and environmental criteria. The campus is treated as an ILEC with two electrically interconnected multi-energy hubs involving technologies such as PV, solar thermal, combined heat and power systems, electric and geothermal hea... [more]
Decomposition of a Cooling Plant for Energy Efficiency Optimization Using OptTopo
Gregor Thiele, Theresa Johanni, David Sommer, Jörg Krüger.
February 24, 2023 (v1)
Subject: Optimization
Keywords: decomposition, Energy Efficiency, Optimization, OptTopo, system of systems.
The operation of industrial supply technology is a broad field for optimization. Industrial cooling plants are often (a) composed of several components, (b) linked using network technology, (c) physically interconnected, and (d) complex regarding the effect of set-points and operating points in every entity. This leads to the possibility of overall optimization. An example containing a cooling tower, water circulations, and chillers entails a non-linear optimization problem with five dimensions. The decomposition of such a system allows the modeling of separate subsystems which can be structured according to the physical topology. An established method for energy performance indicators (EnPI) helps to formulate an optimization problem in a coherent way. The novel optimization algorithm OptTopo strives for efficient set-points by traversing a graph representation of the overall system. The advantages are (a) the ability to combine models of several types (e.g., neural networks and polyn... [more]
An Adaptive Strategy for Medium-Term Electricity Consumption Forecasting for Highly Unpredictable Scenarios: Case Study Quito, Ecuador during the Two First Years of COVID-19
Manuel Jaramillo, Diego Carrión.
February 24, 2023 (v1)
Subject: Optimization
Keywords: adaptive models, demand forecasting, load forecasting, medium term forecasting, optimization techniques, power demand, time series analysis.
This research focuses its efforts on the prediction of medium-term electricity consumption for scenarios of highly variable electricity demand. Numerous approaches are used to predict electricity demand, among which the use of time series (ARMA, ARIMA) and the use of machine learning techniques, such as artificial neural networks, are the most covered in the literature review. All these approaches evaluate the prediction error when comparing the generated models with the data that fed the model, but they do not compare these values with the actual data of electricity demand once these are obtained, in addition, these techniques present high error values when there are unexpected changes in the trend of electricity consumption. This work proposes a methodology to generate an adaptive model for unexpected changes in electricity demand through the use of optimization in conjunction with SARIMA time series. The proposed case study is the electricity consumption in Quito, Ecuador to predict... [more]
Optimization of Cogeneration Power-Desalination Plants
Ariana M. Pietrasanta, Sergio F. Mussati, Pio A. Aguirre, Tatiana Morosuk, Miguel C. Mussati.
February 24, 2023 (v1)
Subject: Optimization
Keywords: combined-cycle heat and power plant, desalination, MINLP, multi-effect distillation, muti-stage flash desalination, Optimization.
The design of new dual-purpose thermal desalination plants is a combinatory problem because the optimal process configuration strongly depends on the desired targets of electricity and freshwater. This paper proposes a mathematical model for selecting the optimal structure, the operating conditions, and sizes of all system components of dual-purpose thermal desalination plants. Electricity is supposed to be generated by a combined-cycle heat and power plant (CCHPP) with the following candidate structures: (a) one or two gas turbines; (b) one or two additional burners in the heat recovery steam generator; (c) the presence or missing a medium-pressure steam turbine; (d) steam generation and reheating at low pressure. Freshwater is supposed to be obtained from two candidate thermal processes: and (e) a multi-effect distillation (MED) or a multi-stage flash (MSF) system. The number of effects in MED and stages in MSF are also discrete decisions. Different case studies are presented to show... [more]
Study on the Effect of Acid Corrosion on Proppant Properties
Feng Xu, Kuai Yao, Desheng Li, Dongjin Xu, Huan Yang.
February 24, 2023 (v1)
Subject: Optimization
Keywords: acid solubility, compressive strength, conductivity, pre-acid fracturing.
Pre-acid fracturing is an effective technique to improve productivity of tight reservoirs. While acid injection can clean the formation and improve the fracturing performance by reducing the fracture pressure of the reservoir, the chemical reaction of the acid solution with proppant may reduce the compressive strength of the proppant and therefore negatively affect the fracture conductivity. In this study, we experimentally investigated the solubility of the proppant in acid and the effect of acid corrosion on proppant compressive strength and fracture conductivity. The results show that the concentration of the acid solution has the greatest effect on solubility of the proppant, which is followed by the contact reaction time. Though a proppant of larger particle size indicates a lower solubility, the acid corrosion poses a greater damage to its compressive strength and conductivity. The quartz sand proppant exhibits superior stability to ceramic proppant when they are subjected to aci... [more]
Single and Multi-Objective Optimal Power Flow Based on Hunger Games Search with Pareto Concept Optimization
Murtadha Al-Kaabi, Virgil Dumbrava, Mircea Eremia.
February 24, 2023 (v1)
Subject: Optimization
Keywords: active power losses, emission, fuel cost, fuzzy set theory, hunger games search (HGS), multi-objective hunger games search (MOHGS), multi-objective optimal power flow (MOOPF), Pareto concept, voltage deviation, voltage stability index.
In this study, a new meta-heuristic optimization method inspired by the behavioral choices of animals and hunger-driven activities, called hunger games search (HGS), is suggested to solve and formulate the single- and multi-objective optimal power flow problem in power systems. The main aim of this study is to optimize the objective functions, which are total fuel cost of generator, active power losses in transmission lines, total emission issued by fossil-fueled thermal units, voltage deviation at PQ bus, and voltage stability index. The proposed HGS approach is optimal and easy, avoids stagnation in local optima, and can solve multi-constrained objectives. Various single-and multi-objective (conflicting) functions were proposed simultaneously to solve OPF problems. The proposed algorithm (HGS) was developed to solve the multi-objective function, called the multi-objective hunger game search (MOHGS), by incorporating the proposed optimization (HGS) with Pareto optimization. The fuzzy... [more]
Energy Balance Data-Based Optimization of Louver Installation Angles for Different Regions in Korea
Seung-Ju Choe, Seung-Hoon Han.
February 24, 2023 (v1)
Subject: Optimization
Keywords: cooling load, heating load, louver, thermal load balance.
A louver is a traditional environmental control device and passive architectural element based on an ecofriendly concept. Louvers are architectural elements that can be used to regulate natural lighting, thermal environment, and building energy use. To realize these integrated functionalities of louvers, they must be designed considering the climate and geographical characteristics of the target region. However, these aspects are typically not considered during building design in Korea, resulting in lovers being used as design elements with simple natural lighting control functions. Therefore, the objective of this study was to promote the integrated use of louvers by optimizing the louver angle according to the microclimate in Korea from the viewpoint of thermal energy use. We performed load and energy simulation planning and calculation and conducted optimization studies for the louver angle and range of motion for each region. The energy consumption in central and southern Korean re... [more]
Electric Power Load Forecasting Method Based on a Support Vector Machine Optimized by the Improved Seagull Optimization Algorithm
Suqi Zhang, Ningjing Zhang, Ziqi Zhang, Ying Chen.
February 24, 2023 (v1)
Subject: Optimization
Keywords: electric management system, Improved Seagull Optimization Algorithm, power load forecasting, Seagull Optimization Algorithm, Support Vector Machine.
Accurate load forecasting is conducive to the formulation of the power generation plan, lays the foundation for the formulation of quotation, and provides the basis for the power management system and distribution management system. This study aims to propose a high precision load forecasting method. The power load forecasting model, based on the Improved Seagull Optimization Algorithm, which optimizes SVM (ISOA-SVM), is constructed. First, aiming at the problem that the random selection of internal parameters of SVM will affect its performance, the Improved Seagull Optimization Algorithm (ISOA) is used to optimize its parameters. Second, to solve the slow convergence speed of the Seagull Optimization Algorithm (SOA), three strategies are proposed to improve the optimization performance and convergence accuracy of SOA, and an ISOA algorithm with better optimization performance and higher convergence accuracy is proposed. Finally, the load forecasting model based on ISOA-SVM is establis... [more]
Feasibility of Harris Hawks Optimization in Combination with Fuzzy Inference System Predicting Heating Load Energy Inside Buildings
Hossein Moayedi, Bao Le Van.
February 24, 2023 (v1)
Subject: Optimization
Keywords: ANFIS, heating-load, metaheuristic, residential buildings.
Heating and cooling systems account for a considerable portion of the energy consumed for domestic reasons in Europe. Burning fossil fuels is the main way to produce this energy, which has a detrimental effect on the environment. It is essential to consider a building’s characteristics when determining how much heating and cooling is necessary. As a result, a study of the related buildings’ characteristics, such as the type of cooling and heating systems required for maintaining appropriate indoor air conditions, can help in the design and construction of energy-efficient buildings. Numerous studies have used machine learning to predict cooling and heating systems based on variables that include relative compactness, orientation, overall height, roof area, wall area, surface area, glazing area, and glazing area distribution. Fuzzy logic, however, is not used in any of these methods. In this article, we study a fuzzy logic approach, i.e., HHO−ANFIS (combination of Harris hawks optimizat... [more]
A Two-Tier Superstructure Model for Optimization of Microalgae-Based Biorefinery
Siwen Gu, Jiaan Wang, Yu Zhuang.
February 24, 2023 (v1)
Subject: Optimization
Keywords: circular economy, microalgae-based biorefinery, mixed integer nonlinear programming, superstructure optimization, sustainability development.
Microalgae have attracted great research interest as a feedstock for producing a wide range of end-products. However, recent studies show that the tight processing integration technology for microalgae-based biorefinery makes production less economical and even has a negative impact on sustainability. In this study, a new two-tier superstructure optimization design methodology is proposed to locate the optimal processing pathway. This model is developed based on the decomposition strategy and the relationship-based investigation, coupling an outer-tier structure with an inner-tier structure, wherein the outlet flows of the middle stages is relaxed and then an appropriate level of redundancy for designing the processing is provided. Two scenarios are developed to compare the most promising biorefinery configurations under two different design option favors. By solving the mixed integer nonlinear programming model with the objective functions of maximizing the yield of the desired produc... [more]
MPPT Control Algorithm Based on Particle Swarm Optimization and Adaptive Linear Active Disturbance Rejection Control
Miao Zhang, Keyu Zhuang, Tong Zhao, Jingze Xue, Yunlong Gao, Shuai Cui, Zheng Qiao.
February 24, 2023 (v1)
Subject: Optimization
Keywords: adaptive control, LADRC, MPPT, PSO, PV system.
Aiming at the problem of maximum power point tracking (MPPT) of photovoltaic arrays in photovoltaic power generation systems, a particle swarm optimization (PSO) MPPT method combined with adaptive linear active disturbance rejection control (A-LADRC) algorithm was proposed and designed. In this method, PSO is used to track the maximum power point (MPP), and then the A-LADRC controller was used to track the reference voltage. The controller enhances the anti-interference ability against various external disturbances in the MPPT process and accelerates the response speed of the system. Compared with the perturbation observation method (P&O), traditional PSO and LADRC, the proposed method has good tracking performance and an anti-interference ability under various external disturbances.
Research on Fault Early Warning of Wind Turbine Based on IPSO-DBN
Zhaoyan Zhang, Shaoke Wang, Peiguang Wang, Ping Jiang, Hang Zhou.
February 24, 2023 (v1)
Subject: Optimization
Keywords: deep belief network, improved particle swarm optimization algorithm, wind power generator, wind turbine.
Aiming at the problem of wind turbine generator fault early warning, a wind turbine fault early warning method based on nonlinear decreasing inertia weight and exponential change learning factor particle swarm optimization is proposed to optimize the deep belief network (DBN). With the data of wind farm supervisory control and data acquisition (SCADA) as input, the weights and biases of the network are pre-trained layer by layer. Then the BP neural network is used to fine-tune the parameters of the whole network. The improved particle swarm optimization algorithm (IPSO) is used to determine the number of neurons in the hidden layer of the model, pre-training learning rate, reverse fine-tuning learning rate, pre-training times and reverse fine-tuning training times and other parameters, and the DBN predictive regression model is established. The experimental results show that the proposed model has better performance in accuracy, training time and nonlinear fitting ability than the DBN... [more]
Deep Reinforcement Learning-Based Operation of Transmission Battery Storage with Dynamic Thermal Line Rating
Vadim Avkhimenia, Matheus Gemignani, Tim Weis, Petr Musilek.
February 24, 2023 (v1)
Subject: Optimization
Keywords: battery capacity sizing, battery degradation, deep reinforcement learning, demand response, dynamic line rating, linear programming, load forecasting, multi-agent system.
It is well known that dynamic thermal line rating has the potential to use power transmission infrastructure more effectively by allowing higher currents when lines are cooler; however, it is not commonly implemented. Some of the barriers to implementation can be mitigated using modern battery energy storage systems. This paper proposes a combination of dynamic thermal line rating and battery use through the application of deep reinforcement learning. In particular, several algorithms based on deep deterministic policy gradient and soft actor critic are examined, in both single- and multi-agent settings. The selected algorithms are used to control battery energy storage systems in a 6-bus test grid. The effects of load and transmissible power forecasting on the convergence of those algorithms are also examined. The soft actor critic algorithm performs best, followed by deep deterministic policy gradient, and their multi-agent versions in the same order. One-step forecasting of the load... [more]
ECViST: Mine Intelligent Monitoring Based on Edge Computing and Vision Swin Transformer-YOLOv5
Fan Zhang, Jiawei Tian, Jianhao Wang, Guanyou Liu, Ying Liu.
February 24, 2023 (v1)
Subject: Optimization
Keywords: edge-cloud collaboration, mine intelligent monitoring, object detection, vision swin transformer, YOLOv5.
Mine video surveillance has a key role in ensuring the production safety of intelligent mining. However, existing mine intelligent monitoring technology mainly processes the video data in the cloud, which has problems, such as network congestion, large memory consumption, and untimely response to regional emergencies. In this paper, we address these limitations by utilizing the edge-cloud collaborative optimization framework. First, we obtained a coarse model using the edge-cloud collaborative architecture and updated this to realize the continuous improvement of the detection model. Second, we further proposed a target detection model based on the Vision Swin Transformer-YOLOv5(ViST-YOLOv5) algorithm and improved the model for edge device deployment. The experimental results showed that the object detection model based on ViST-YOLOv5, with a model size of only 27.057 MB, improved the average detection accuracy is by 25% compared to the state-of-the-art model, which makes it suitable f... [more]
Research on Packet Control Strategy of Constant-Frequency Air-Conditioning Demand Response Based on Improved Particle Swarm Optimization Algorithm
Qian Liu, Guangnu Fu, Gang Ma, Jun He, Weikang Li.
February 24, 2023 (v1)
Subject: Optimization
Keywords: air-conditioning load, demand response, improved particle swarm optimization, the aggregation model, the control strategy.
To better utilize air-conditioning load in terms of demand side response potential and improve precision and speed, a control strategy of traditional temperature-control air conditioning, determining frequency load as the research object, and air conditioning determined with a frequency theory model and the Monte Carlo method, were used to construct a power aggregation model. This was combined with user feedback to study thermal comfort as a lateral load demand response resource to determine the potential demand response of power systems. Based on the state-queuing model, an air-conditioning load grouping control strategy using an improved particle swarm optimization algorithm is proposed which can accurately control the air-conditioning load following the reference load.
Performance Analysis and Optimization for Static Mixer of SCR Denitration System under Different Arrangements
Zhanzhou Pang, Ranjing Chen, Yue Cao.
February 24, 2023 (v1)
Subject: Optimization
Keywords: arrangement mode, concentration field, flow field, SCR, static mixer.
In order to solve the poor flow performance issues of selective catalytic reduction (SCR) denitration systems, the effect of the static mixer on the flow field was studied using computational fluid dynamics (CFD) numerical simulations. Based on the analysis of the original SCR denitration system, two static mixers were selected to explore their influence on system performance. The results show that both static mixers can effectively improve the denitration performance under different conditions. The static mixer with a rotating arrangement showed a better performance in the uniformity of concentration. The pressure loss without a static mixer is 834 Pa, and the pressure loss increases by 94 Pa and 73 Pa for rotating and X-arranged static mixers, respectively. Meanwhile, a static mixer will increase energy loss. Therefore, power plants can choose the layout of their static mixers according to the actual situation to achieve the optimal performance.
Study on Unstable Combustion Characteristics of Model Combustor with Different Swirler Schemes
Jiangang Hao, Yang Ding, Chen Yang, Xuhuai Wang, Xiang Zhang, Yong Liu, Feng Jin.
February 24, 2023 (v1)
Subject: Optimization
Keywords: combustion instability, flame image, flame transfer function, low order thermoacoustic network, swirler.
In this paper, the effect of the swirler scheme on combustion instability is studied. Through the proper orthogonal decomposition (POD) of flame images, Abel inverse transform and other methods, the influence of swirl intensity on the characteristic frequency of combustion instability was emphatically studied. Based on the low order thermoacoustic network (LOTAN) of the combustor, the flame transfer function (FTF) under different swirl schemes was obtained by the optimization method. The experimental results show that the stable combustion equivalence ratio boundary of the system decreases monotonously with the decrease in swirl intensity, while the characteristic frequency of unstable combustion is not monotonous with the swirl intensity (the oscillating frequency of swirler A with the largest swirl intensity is approximately 319 Hz, swirler B is approximately 280 Hz, swirler C with the smallest swirl intensity is approximately 290 Hz). The optimization results of FTF can easily intro... [more]
Earthquake Algorithm-Based Voltage Referenced MPPT Implementation through a Standardized Validation Frame
Alexandro Ortiz, Efrain Mendez, Israel Macias, Arturo Molina.
February 24, 2023 (v1)
Subject: Optimization
Keywords: DC-DC converter, FPGA, MPPT.
This paper presents a new direct maximum power point tracking (MPPT) with a reference voltage (Vref) based on the metaheuristic earthquake algorithm (EA) where the optimization variable is the Vref for hard-switching converters. The efficiency and performance of EA-MPPT-Vref is compared with the perturb-and-observe (P&O) counterpart technique due to the fact that it is widely used for commercial products. Static and dynamic responses for both MPPT strategies are evaluated, which correspond to steady-state oscillations when they are near the maximum power point (MPP), and the tracking-speed, respectively. The efficiency was evaluated with the EN 50530 standard. The results show that the new MPPT proposed is a competitive method using the EA to obtain the optimal voltage reference. From static results, EA-MPPT VP presented a better efficiency of 5.13% and 3.23% for European and California energy commission (CEC) efficiency, respectively. Whereas, from dynamic results, MPPT-Vref technique... [more]
Preliminary Study on Optimization of a Geothermal Heating System Coupled with Energy Storage for Office Building Heating in North China
Yapeng Ren, Xinli Lu, Wei Zhang, Jiaqi Zhang, Jiali Liu, Feng Ma, Zhiwei Cui, Hao Yu, Tianji Zhu, Yalin Zhang.
February 24, 2023 (v1)
Subject: Optimization
Keywords: Energy Storage, geothermal heating system, levelized cost of heat, operation strategy, Optimization, time-of-use electricity prices.
Geothermal heating is considered to be one of the low-carbon-energy technologies for building heating. Aiming at the problem that the operating cost and investment cost of geothermal heating systems are still high, the conventional geothermal heating system coupled with energy storage for office building heating is studied in this paper. Four operational strategy models of the coupled system are established based on time-of-use electricity prices. A genetic algorithm is used to find the optimal value of each decision variable using minimization of levelized cost of heat (LCOH) as the objective function. The influences of electricity and equipment prices on the optimal values of the decision variables are discussed. Four operation strategies are investigated. If only operating cost is considered in the optimization, comparison shows that the best operation strategy is the one giving high priority to use the energy storage tank for heating during the peak electricity period. However, if... [more]
Optimization of Energy Production from Two-Stage Mesophilic−Thermophilic Anaerobic Digestion of Cheese Whey Using a Response Surface Methodology Approach
Andrey A. Kovalev, Elza R. Mikheeva, Vladimir Panchenko, Inna V. Katraeva, Dmitriy A. Kovalev, Elena A. Zhuravleva, Yuriy V. Litti.
February 24, 2023 (v1)
Subject: Optimization
Keywords: biohythane, cheese whey, mesophilic–thermophilic mode, Optimization, response surface methodology, two-stage anaerobic digestion.
Spatial separation into acidogenic and methanogenic stages is considered a viable option to ensure process stability, energy efficiency and the better control of key anaerobic digestion (AD) parameters. The elucidation of the optimal modes of two-stage AD for the maximization of the recovery of biofuels (H2 and CH4) is still an urgent task, the main optimization criteria being the highest energy yield (EY) and energy production rate (EPR). In this work, a response surface methodology was used for an optimization of energy production from the two-stage mesophilic−thermophilic AD of cheese whey (CW). Three dilution rates of CW, providing values of 10.9, 14.53 and 21.8 g for the chemical oxygen demand (COD)/L in the influent and three hydraulic retention times (HRTs) (1, 2 and 3 days) in methanogenic biofilters at a constant HRT in an acidogenic biofilter of 0.42 days, were tested to optimize the EY and EPR. The desirability approach produced combined optimum conditions as follows: the di... [more]
Improved Thermal Performance of a Serpentine Cooling Channel by Topology Optimization Infilled with Triply Periodic Minimal Surfaces
Kirttayoth Yeranee, Yu Rao, Li Yang, Hao Li.
February 24, 2023 (v1)
Subject: Optimization
Keywords: heat transfer, multipass cooling channel, pressure loss, topology optimization, triply periodic minimal surface, turbulent flow.
The present study utilizes a density-based topology optimization method to design a serpentine channel under turbulent flow, solving a high pressure loss issue and enhancing heat transfer capability. In the topology optimization, the k−ε turbulence model is modified by adding penalization terms to reveal turbulence effects. Heat transfer modeling is included by setting the modified energy equation with additional terms related to topology optimization. The main objective is to minimize pressure loss while restricting heat transfer. The 2D simplified model is topologically optimized. Then, the optimal solution with intermediate results is extruded in the 3D system and interpreted with triply periodic minimal surfaces (TPMS) to further enhance heat transfer performance. Compared to the baseline serpentine channel, the optimized model infilled with the diamond-TPMS structure lowers pressure loss by 30.8% and significantly enhances total heat transfer by up to 45.8%, yielding thermal perfo... [more]
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