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A study on the energy harvesting performance and corresponding theoretical models of piezoelectric seismic energy harvesters 压电地震能量收集器的能量收集性能及相应理论模型研究
IF 10.1 1区 工程技术 Q1 ENERGY & FUELS Pub Date : 2024-09-26 DOI: 10.1016/j.apenergy.2024.124516
The self-powered technology of earthquake sensors and the seismic energy utilization have not been solved well up to now although earthquake includes mega energy. In view of this, a series of piezoelectric seismic energy harvesters (PSEHs) are developed, and their corresponding experiments and simulations about energy harvesting performance are conducted in the excitation of different seismic waves. The effects of some important design parameters on the output voltage and power of PSEHs are studied and discussed. The research results show that U-shaped PSEH has a good ability and ideal robustness in energy harvesting from different seismic waves. For example, the root mean square (RMS) voltages and RMS powers from U-shaped PSEH are 104 V and 11.1 mW for El-Centro wave with a peak ground acceleration (PGA) of 0.024 g, which is feasible to supply an earthquake sensor. Based on the experiment and simulation research, a series of theoretical models are derived to predict the output voltage and power of U-shaped PSEH with different design parameters and different PGAs, these theoretical models give reliable instructions for the design of U-shaped PSEH to match the earthquake sensors in the area authorized by different earthquake intensities.
虽然地震具有巨大的能量,但地震传感器的自供电技术和地震能量利用问题至今尚未得到很好的解决。有鉴于此,我们开发了一系列压电地震能量收集器(PSEHs),并对其在不同地震波激励下的能量收集性能进行了相应的实验和模拟。研究并讨论了一些重要设计参数对 PSEH 输出电压和功率的影响。研究结果表明,U 型 PSEH 在不同地震波的能量收集方面具有良好的能力和理想的鲁棒性。例如,对于峰值地面加速度(PGA)为 0.024 g 的 El-Centro 波,U 型 PSEH 的均方根电压和均方根功率分别为 104 V 和 11.1 mW,可以为地震传感器供电。在实验和仿真研究的基础上,推导出一系列理论模型来预测不同设计参数和不同 PGA 的 U 型 PSEH 的输出电压和功率,这些理论模型为 U 型 PSEH 的设计提供了可靠的指导,以匹配不同地震烈度授权区域的地震传感器。
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引用次数: 0
Shadows behind the sun: Inequity caused by rooftop solar and responses to it 太阳背后的阴影屋顶太阳能造成的不公平及应对措施
IF 10.1 1区 工程技术 Q1 ENERGY & FUELS Pub Date : 2024-09-26 DOI: 10.1016/j.apenergy.2024.124528
The installation of photovoltaic (PV) systems has risen significantly as the global demand for renewable energy increases. Inequitable photovoltaic (PV) adoption exacerbates the energy burden on non-adopting households. Intervention in the PV deployment process is currently the dominant concept to address this challenge. Subsidizing low-income households to scale up PV adoption lacks sustainability, and curbing PV scale by reducing adopters’ benefits from PV has been shown to solidify this inequity. This study attempts to provide new ideas for solutions to eliminate the consequences of inequitable PV adoption without interfering with the scale of PV. We build a sequential game between a profit-maximizing power plant and a profit-maximizing electricity retailer to describe the optimal decisions of the relevant decision-makers in the face of unfair PV adoption. In addition, we construct an evolutionary game model of the electricity market to model the causes of and responses to long-term PV inequity. Our results show that PV results in a decrease in the wholesale price of electricity. However, the electricity retailer may not pass on the price decrease to households, which in turn leads to an increase in the cost of electricity for households that do not adopt PV, which is a new energy equity problem (i.e., price inequity). Subsequently, eliminating time-of-use tariff strategies for PV households and subsidizing the retailer in the early stages of PV deployment could decrease price inequity. In addition, we find that excessive adjustment decisions by the boundedly rational power plant and retailer can lead to electricity market instability and exacerbate the difficulty of decreasing long-run inequality while reducing their focus on the direction of profitability can help to eliminate long-run inequality.
随着全球对可再生能源需求的增加,光伏(PV)系统的安装量也大幅上升。不公平的光伏(PV)采用加剧了未采用家庭的能源负担。目前,对光伏发电部署过程进行干预是应对这一挑战的主要理念。为低收入家庭提供补贴以扩大光伏应用规模的做法缺乏可持续性,而通过减少光伏应用者的收益来遏制光伏应用规模的做法已被证明会加剧这种不公平现象。本研究试图提供新的解决方案思路,在不影响光伏发电规模的情况下消除光伏发电应用不公平的后果。我们在利润最大化的发电厂和利润最大化的电力零售商之间建立了一个连续博弈,以描述相关决策者在面对不公平的光伏应用时的最优决策。此外,我们还构建了电力市场的演化博弈模型,以模拟光伏发电长期不公平的原因和应对措施。我们的研究结果表明,光伏发电会导致电力批发价格的下降。然而,电力零售商可能不会将价格下降转嫁给家庭,这反过来又会导致不采用光伏发电的家庭的用电成本增加,这就是一个新的能源公平问题(即价格不公平)。因此,取消对光伏家庭的分时电价策略,并在光伏部署的早期阶段对零售商进行补贴,可以减少价格不公平现象。此外,我们还发现,有界理性的发电厂和零售商的过度调整决策会导致电力市场不稳定,加剧减少长期不平等的难度,而减少他们对盈利方向的关注则有助于消除长期不平等。
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引用次数: 0
Impact of flexible and bidirectional charging in medium- and heavy-duty trucks on California’s decarbonization pathway 中型和重型卡车灵活双向充电对加州去碳化途径的影响
IF 10.1 1区 工程技术 Q1 ENERGY & FUELS Pub Date : 2024-09-26 DOI: 10.1016/j.apenergy.2024.124450
California has committed to ambitious decarbonization targets across multiple sectors, including decarbonizing the electrical grid by 2045. In addition, the medium- and heavy-duty truck fleets are expected to see rapid electrification over the next two decades. Considering these two pathways in tandem is critical for ensuring cost optimality and reliable power system operation. In particular, we examine the potential cost savings of electrical generation infrastructure by enabling flexible charging and bidirectional charging for these trucks. We also examine costs adjacent to enabling these services, such as charger upgrades and battery degradation. We deploy a large mixed-integer decarbonization planning model to quantify the costs associated with the electric generation decarbonization pathway. Example scenarios governing truck driving and charging behaviors are implemented to reveal the sensitivity of temporal driving patterns. Our experiments show that cost savings on the order of multiple billions of dollars are possible by enabling flexible and bidirectional charging in medium- and heavy-duty trucks in California.
加州已承诺在多个领域实现雄心勃勃的去碳化目标,包括到 2045 年实现电网去碳化。此外,中型和重型卡车车队预计将在未来二十年内实现快速电气化。同时考虑这两种途径对于确保成本优化和电力系统可靠运行至关重要。我们特别研究了通过为这些卡车实现灵活充电和双向充电来节省发电基础设施成本的潜力。我们还研究了与提供这些服务相关的成本,如充电器升级和电池退化。我们部署了一个大型混合整数去碳化规划模型,以量化与发电去碳化途径相关的成本。我们实施了卡车驾驶和充电行为的示例情景,以揭示时间驾驶模式的敏感性。我们的实验表明,通过在加利福尼亚州的中型和重型卡车上实现灵活的双向充电,可以节省数十亿美元的成本。
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引用次数: 0
Co-optimization of virtual power plants and distribution grids: Emphasizing flexible resource aggregation and battery capacity degradation 虚拟发电厂和配电网的共同优化:强调灵活的资源聚合和电池容量衰减
IF 10.1 1区 工程技术 Q1 ENERGY & FUELS Pub Date : 2024-09-26 DOI: 10.1016/j.apenergy.2024.124519
Coordination between virtual power plants and active distribution networks is crucial as these plants increasingly aggregate distributed resources within the power system. This study introduces a bilevel optimization framework to coordinate the scheduling of multiple virtual power plants and an active distribution network using pricing strategies for energy and reserves. The upper-level optimization minimizes total operating costs by incorporating bidding plans of the active distribution network in various markets, its interactions with multiple virtual power plants, and operational costs. The lower-level optimization maximizes revenue for each virtual power plant, considering both battery capacity degradation costs and operational costs of various resources. To facilitate solutions, this research developed a nonlinear transformation method for modeling capacity degradation. Based on the dispatching strategy from the virtual power plant, this study uses the squared difference between energy consumption of equipment for controllable loads and the strategy as the optimization target to derive control strategies for two equipment types. Results show that the framework effectively integrates dispatch and control strategies without oversimplifying the system model, proving its applicability in various scenarios with diverse resource compositions.
随着虚拟发电厂越来越多地汇集电力系统中的分布式资源,虚拟发电厂与主动配电网络之间的协调至关重要。本研究引入了一个双层优化框架,利用能源和储备的定价策略来协调多个虚拟电厂和主动配电网的调度。上层优化将主动配电网络在不同市场的投标计划、与多个虚拟电厂的互动以及运营成本纳入其中,从而使总运营成本最小化。下层优化考虑到电池容量衰减成本和各种资源的运营成本,使每个虚拟电厂的收益最大化。为便于解决问题,本研究开发了一种非线性转换方法,用于模拟容量衰减。基于虚拟电厂的调度策略,本研究以可控负载设备能耗与策略的平方差为优化目标,推导出两种设备类型的控制策略。结果表明,该框架有效地整合了调度和控制策略,同时又没有过度简化系统模型,证明了其在各种资源组成情况下的适用性。
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引用次数: 0
Unsupervised learning for efficiently distributing EVs charging loads and traffic flows in coupled power and transportation systems 在电力和交通耦合系统中有效分配电动汽车充电负荷和交通流的无监督学习
IF 10.1 1区 工程技术 Q1 ENERGY & FUELS Pub Date : 2024-09-26 DOI: 10.1016/j.apenergy.2024.124476
With the escalating adoption of electric vehicles (EVs), the intricate interplay between power and traffic systems becomes increasingly pronounced. Understanding the distribution of charging loads and traffic flows are paramount for effective coordination. Traditionally, the distribution of EVs charging loads and traffic flows are obtained via solving the EVs traffic assignment problem with User Equilibrium (TAP-UE). Despite the general convexity of TAP-UE, the iterative nature of the prevailing solution process and the nonlinear objective function pose challenges, leading to prolonged solution times. This paper introduces a novel unsupervised learning-based framework aimed at efficiently distributing EVs charging loads and traffic flows without off-the-shelf solvers or a large dataset. Firstly, feasible paths are identified for each OD pair, eliminating the need for iterative procedures. Subsequently, the convexity-preserving reformulation of TAP-UE converts it into an unconstrained nonlinear optimization problem, leading to a properly designed loss function to guide neural networks in directly learning a legitimate OD demands-EVs loads-traffic flows mapping which satisfies the UE conditions. The incorporation of the Hessian matrix into the gradient update of network parameters, facilitated by the Limited-memory Broyden–Fletcher–Goldfarb–Shanno (L-BFGS) algorithm, enhances the convergence speed of the unsupervised learning process. Case studies are conducted to demonstrate the efficacy of the proposed framework.
随着电动汽车(EV)的普及,电力和交通系统之间错综复杂的相互作用变得日益明显。了解充电负荷和交通流量的分布对于有效协调至关重要。传统上,电动汽车充电负荷和交通流量的分布是通过求解用户均衡的电动汽车交通分配问题(TAP-UE)获得的。尽管 TAP-UE 具有普遍的凸性,但普遍求解过程的迭代性和非线性目标函数带来了挑战,导致求解时间延长。本文介绍了一种基于无监督学习的新型框架,旨在无需现成的求解器或大型数据集,就能有效分配电动汽车充电负荷和交通流量。首先,为每个 OD 对确定可行路径,从而无需迭代程序。随后,通过对 TAP-UE 进行保留凸性的重新表述,将其转换为无约束非线性优化问题,从而设计出适当的损失函数,引导神经网络直接学习满足 UE 条件的合法 OD 需求-EV 负载-交通流映射。在有限记忆 Broyden-Fletcher-Goldfarb-Shanno 算法(L-BFGS)的帮助下,将 Hessian 矩阵纳入网络参数的梯度更新,提高了无监督学习过程的收敛速度。我们还进行了案例研究,以证明拟议框架的有效性。
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引用次数: 0
Perspective modelling and measuring discharge voltage on truncated data of long-term stored Li-ion batteries based on functional state space model 基于功能状态空间模型的长期储存锂离子电池截断数据的透视建模和放电电压测量
IF 10.1 1区 工程技术 Q1 ENERGY & FUELS Pub Date : 2024-09-26 DOI: 10.1016/j.apenergy.2024.124496
The subject of battery sources and electrical energy accumulators is currently very topical. Moreover, the possibilities of reusing already discarded sources are being explored as so-called “second-life batteries”. This article is concerned with studying and modelling the behaviour of a battery in an electric aircraft in operation — the voltage during discharge. Outcomes from extensive experiments on real long-term stored batteries have provided statistically robust sets of data on both long-term stored and new batteries; some of the data, however, are truncated. A modern approach that neglects the truncated issues and is based on functional data analysis and modified with a specific time series is used to model the process. This suggested model is much more accurate than the model used previously as it can effectively process truncated data. It also allows a certain degree of generalization. The aim is to determine the probability density of the time when the battery reaches the critical value, including the numerical statistics, for both stored and new batteries. The results are compared using the specific statistical Kullback–Leibler divergence approach to determine the degree of difference. The proposed model applies to similar issues where battery voltage is modelled in a time domain while the data form is truncated. It is proved, however, that further use of the stored batteries does not disrupt the safe and reliable operation of an electric airplane in terms of their functionality.
电池源和蓄电池是当前非常热门的话题。此外,作为所谓的 "二次电池",人们正在探索重新利用已废弃电池的可能性。本文主要研究和模拟电动飞机电池在运行过程中的行为--放电时的电压。对真实的长期储存电池进行的大量实验结果为长期储存电池和新电池提供了统计上可靠的数据集;但其中一些数据是截断的。现代方法忽略了截断问题,以函数数据分析为基础,用特定的时间序列对其进行修改,从而为这一过程建模。这种建议的模型比以前使用的模型要准确得多,因为它能有效地处理截断数据。它还允许一定程度的泛化。目的是确定电池达到临界值时间的概率密度,包括存储电池和新电池的数值统计。使用特定的统计库尔巴克-莱伯勒发散法对结果进行比较,以确定差异程度。提出的模型适用于电池电压在时域中建模而数据形式被截断的类似问题。然而,事实证明,进一步使用存储的电池不会破坏电动飞机安全可靠的运行功能。
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引用次数: 0
Enhancing energy efficiency in supermarkets: A data-driven approach for fault detection and diagnosis in CO2 refrigeration systems 提高超市能效:二氧化碳制冷系统故障检测和诊断的数据驱动方法
IF 10.1 1区 工程技术 Q1 ENERGY & FUELS Pub Date : 2024-09-26 DOI: 10.1016/j.apenergy.2024.124479
Supermarkets are significant consumers of energy, primarily due to refrigeration systems, which also contribute to global climate change through hydrofluorocarbon refrigerants. The transition to CO2 refrigeration systems (CO2-RS) offers a low-environmental-impact alternative; however, malfunctions can undermine these benefits. To prevent CO2-RS from malfunctioning, fault detection and diagnostics (FDD) are commonly employed. This study presents an innovative approach to developing an efficient data-driven FDD model for CO2-RS, emphasizing cost-effective sensor utilization and model interpretability. This new method is essential due to the limitations of existing FDD techniques, which often lack cost-effective sensor solutions and model interpretability, thereby hindering their practical application and effectiveness in identifying and diagnosing faults in CO2-RS. The approach focuses on diagnosing common faults in CO2-RS by developing virtual sensors, employing tree-based machine learning algorithms (Random Forest, XGBoost, CatBoost, LightGBM), selecting an optimal sensor set, and using SHapley Additive exPlanations (SHAP) for interpretability. The integration of three developed virtual sensors with pre-installed physical sensors, derived from physical relationships and existing sensors, enhances access to cost-effective sensors and improves the performance of data-driven FDD models. These virtual sensors, as well as the physical sensors needed to develop them, are selected as the optimal sensor set. Additionally, the data-driven FDD model, utilizing the random forest (RF) algorithm and the optimal sensor set, is introduced as an efficient model capable of classifying faults in CO2-RS, achieving an accuracy of 99.48 %, with precision and recall of 99.57 %, and an F1-score of 99.42 %. The SHAP technique is employed to enhance model interpretability, ensuring practical deployment in supermarket settings.
超市是能源消耗大户,这主要归功于制冷系统,而氢氟碳制冷剂也加剧了全球气候变化。向二氧化碳制冷系统(CO2-RS)的过渡提供了一种对环境影响较小的替代方案;然而,故障可能会破坏这些好处。为了防止二氧化碳制冷系统发生故障,通常采用故障检测和诊断(FDD)技术。本研究提出了一种创新方法,为 CO2-RS 开发高效的数据驱动 FDD 模型,强调成本效益的传感器利用和模型的可解释性。现有的 FDD 技术往往缺乏经济有效的传感器解决方案和模型可解释性,从而阻碍了它们在识别和诊断 CO2-RS 故障方面的实际应用和有效性,因此这种新方法至关重要。该方法的重点是通过开发虚拟传感器、采用基于树的机器学习算法(随机森林、XGBoost、CatBoost、LightGBM)、选择最佳传感器集和使用 SHapley Additive exPlanations(SHAP)来诊断 CO2-RS 中的常见故障,以提高可解释性。将三个开发的虚拟传感器与预装的物理传感器(源自物理关系和现有传感器)整合在一起,可增强对具有成本效益的传感器的访问,并提高数据驱动的 FDD 模型的性能。这些虚拟传感器以及开发这些传感器所需的物理传感器被选为最佳传感器集。此外,利用随机森林(RF)算法和最佳传感器集,引入了数据驱动 FDD 模型,作为能够对 CO2-RS 中的故障进行分类的高效模型,其准确率达到 99.48 %,精确率和召回率均为 99.57 %,F1 分数为 99.42 %。采用 SHAP 技术提高了模型的可解释性,确保了在超市环境中的实际部署。
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引用次数: 0
Joint-task learning framework with scale adaptive and position guidance modules for improved household rooftop photovoltaic segmentation in remote sensing image 带有尺度自适应和位置引导模块的联合任务学习框架,用于改进遥感图像中的家庭屋顶光伏分割
IF 10.1 1区 工程技术 Q1 ENERGY & FUELS Pub Date : 2024-09-26 DOI: 10.1016/j.apenergy.2024.124521
Inaccurate edge detection is a common challenge in the segmentation of household rooftop photovoltaic (PV) systems from remote sensing images, which hinders the accurate retrieval of PV distribution information critical for planning and managing PV development. A widely adopted solution is to incorporate an additional edge detection task into a joint-task learning framework to enhance edge perception. However, existing joint-task learning methods often struggle to accurately detect PV edges and lack effective mechanisms for distinguishing PV edges from those of similar objects. To address the above challenges, we develop a novel joint-task learning framework. This framework introduces a Scale Adaptive Module (SAM) that dynamically adjusts the receptive field of edge features based on the PV actual size and shape, enabling precise detection of PV edges with varying shapes and sizes. In addition, a Position Guidance Module (PGM) is proposed based on the intrinsic relationship between the PV segmentation task and the edge detection task. The PGM not only guides the edge detection task to focus on identifying the semantic edges of PVs using the distribution information from the segmentation task but also enhances the ability of the segmentation task to accurately locate PVs in complex backgrounds by utilizing the backward gradient from the edge detection task. Multiple rounds of repeated experiments on the Duke and IGN datasets demonstrate the framework's superior performance. Compared to other models, the proposed framework significantly improves the detection accuracy of various PV edges, achieving the best performance in household rooftop PV segmentation with an Intersection over Union (IoU) of 77.4 %. This study provides valuable insights into the accurate acquisition of household rooftop PV information and offers a promising solution for object segmentation tasks facing the challenge of inaccurate edge extraction.
在从遥感图像中分割家庭屋顶光伏(PV)系统的过程中,边缘检测不准确是一个常见的挑战,这阻碍了对光伏开发规划和管理至关重要的光伏分布信息的准确检索。一种被广泛采用的解决方案是在联合任务学习框架中加入额外的边缘检测任务,以增强边缘感知能力。然而,现有的联合任务学习方法往往难以准确检测光伏边缘,并且缺乏有效的机制将光伏边缘与类似物体的边缘区分开来。为了应对上述挑战,我们开发了一种新颖的联合任务学习框架。该框架引入了规模自适应模块(SAM),可根据光伏的实际尺寸和形状动态调整边缘特征的感受野,从而实现对不同形状和尺寸的光伏边缘的精确检测。此外,还根据光伏分割任务与边缘检测任务之间的内在关系提出了位置引导模块(PGM)。PGM 不仅能引导边缘检测任务利用分割任务的分布信息重点识别 PV 的语义边缘,还能利用边缘检测任务的后向梯度增强分割任务在复杂背景中准确定位 PV 的能力。在杜克和 IGN 数据集上进行的多轮重复实验证明了该框架的卓越性能。与其他模型相比,所提出的框架显著提高了各种光伏边缘的检测准确性,在家庭屋顶光伏分割中取得了最佳性能,交集大于联合(IoU)为 77.4%。这项研究为准确获取家庭屋顶光伏信息提供了有价值的见解,并为面临边缘提取不准确挑战的物体分割任务提供了一种前景广阔的解决方案。
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引用次数: 0
Reinforcement learning for heliostat aiming: Improving the performance of Solar Tower plants 定日镜瞄准的强化学习:提高太阳能塔设备的性能
IF 10.1 1区 工程技术 Q1 ENERGY & FUELS Pub Date : 2024-09-26 DOI: 10.1016/j.apenergy.2024.124574
Solar Tower (ST) systems use heliostats to concentrate solar radiation onto a tower-mounted receiver. Optimizing the aiming strategy for these heliostats over the receiver remains a critical challenge due to the dynamic nature of solar radiation and the need to maximize energy capture while ensuring operational safety. This paper introduces a novel, model-free deep Reinforcement Learning (RL) approach to optimize heliostat aiming strategies, utilizing the Soft Actor–Critic (SAC) algorithm. This advanced RL method enhances the traditional Actor–Critic framework with two neural networks. The proposal dynamically adjusts the aiming points across the receiver surface in real time, trying to improve the overall performance of the ST plant. The strategy was simulated and evaluated over a full operational year and compared with traditional methods. The results show an increase of more than 8.8% in yearly absorbed power, a significant improvement that directly enhances performance and contributes to better economic outcomes for the technology. This technique also eliminates the need for constant human intervention and is applicable to both existing and future plants.
太阳能塔(ST)系统利用定日镜将太阳辐射集中到塔式接收器上。由于太阳辐射具有动态特性,而且需要在确保运行安全的同时最大限度地捕获能量,因此优化这些定日镜在接收器上的瞄准策略仍然是一项严峻的挑战。本文介绍了一种新颖、无模型的深度强化学习(RL)方法,利用软代理批评(SAC)算法优化定日镜瞄准策略。这种先进的强化学习(RL)方法利用两个神经网络增强了传统的行为批判框架。该建议可实时动态调整整个接收器表面的瞄准点,以提高 ST 设备的整体性能。对该策略进行了模拟,并对其全年运行情况进行了评估,同时与传统方法进行了比较。结果显示,每年的吸收功率提高了 8.8% 以上,这一显著改进直接提高了性能,有助于改善该技术的经济效益。该技术还无需持续的人工干预,适用于现有和未来的发电厂。
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引用次数: 0
Study on the evolution laws and induced failure of series arcs in cylindrical lithium-ion batteries 圆柱形锂离子电池中串联电弧的演变规律和诱发故障研究
IF 10.1 1区 工程技术 Q1 ENERGY & FUELS Pub Date : 2024-09-26 DOI: 10.1016/j.apenergy.2024.124562
With the increase of voltage level in energy-storage and power battery system, the electrical safety phenomenon of battery systems has received extensive attention. The issue of series arcs caused by electrical failure such as loose connections in battery systems has become increasingly serious. However, research on series arcs in battery systems is still in its early stages. Therefore, to investigate arc-related disasters in batteries, this study establishes an experimental platform to simulate series arc faults. Taking positive electrode terminal arcs as the focused point, this study explores the evolutionary patterns of battery-related arcs and under different conditions, and analyzes the hazardous effects on batteries. The results indicate that stable arcs can be generated in batteries with different states of charge (SOC) when the system voltage is 200 V and the circuit current is 2C. At the same time, the arc can melt the battery casing to form holes, leading to electrolyte leakage, and triggering battery short-circuit and open-circuit failures. The research findings of this study fill a gap in the field of battery system arc safety and are of vital importance for enhancing the safety performance of arc protection.
随着储能和动力电池系统电压等级的提高,电池系统的电气安全现象受到广泛关注。电池系统中因连接松动等电气故障引起的串联电弧问题日益严重。然而,对电池系统中串联电弧的研究仍处于早期阶段。因此,为了研究电池中与电弧相关的灾害,本研究建立了一个模拟串联电弧故障的实验平台。本研究以正极端子电弧为重点,探讨了不同条件下电池相关电弧的演化规律,并分析了其对电池的危害。研究结果表明,当系统电压为 200 V、电路电流为 2C 时,不同充电状态(SOC)的电池都能产生稳定的电弧。同时,电弧会熔化电池外壳形成孔洞,导致电解液泄漏,引发电池短路和开路故障。该研究成果填补了电池系统电弧安全领域的空白,对提高电弧保护的安全性能具有重要意义。
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引用次数: 0
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Applied Energy
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