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The role of Zr in modulating the electronic and structural properties of supported Ni catalysts for catalytic decomposition of methane
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作者 LIU Lu REN Shenyong +2 位作者 YAO Chengshu SHEN Baojian XU Chunming 《燃料化学学报(中英文)》 北大核心 2026年第2期88-101,共14页
Catalytic decomposition of methane,which produces high-purity hydrogen and high-value-added carbon nanomaterials,has shown considerable potential for development and is expected to yield significant economic benefits ... Catalytic decomposition of methane,which produces high-purity hydrogen and high-value-added carbon nanomaterials,has shown considerable potential for development and is expected to yield significant economic benefits in the future.However,designing catalysts that simultaneously exhibit high activity and long-term stability remains a significant challenge.Tuning the catalyst’s structure and electronic properties is an effective strategy for enhancing the reaction performance.In this work,a series of NixZr/ZSM-5 catalysts were prepared using the incipient wetness impregnation method,and the effect of Zr loadings on catalyst properties and performance was systematically investigated.The calcined and reduced catalysts were characterized by low-temperature N_(2)adsorption-desorption,XRD,SEM,H_(2)-TPR and XPS.The results showed that the addition of Zr significantly increased the specific surface area of the catalyst and reduced the metal particle size.Smaller NiO particles were found to enter the pores of the HZSM-5 support,and electronic interactions between NiO and ZrO_(2)markedly enhanced the metal-support interaction.The catalyst exhibited optimal catalytic performance at a Zr loading of 5%,achieving a maximum methane conversion of 68%at 625℃,maintaining activity for 900 min,and delivering a carbon yield of 1927%.Further increasing the Zr loading yielded only limited improvements in catalytic performance.Characterization of the spent catalysts and carbon products via TEM,Raman spectroscopy,and TGA revealed that the introduction of ZrO_(2)reduced metal sintering and promoted a shift in carbon nanofibers growth mode from tip-growth to base-growth.The mechanism of base-growth enabled the catalyst to maintain reaction activity for an extended period. 展开更多
关键词 promoter ZrO_(2) Ni/HZSM-5 catalytic decomposition of methane carbon nanofibers
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Thermal decomposition and kinetics of diisopropyl methylphosphonate(DIMP),a chemical warfare agent simulant
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作者 Natalie Gese Hergen Eilers 《Defence Technology(防务技术)》 2026年第1期40-51,共12页
Chemical warfare agents(CWAs)remain a persistent hazard in many parts of the world,necessitating a deeper exploration of their chemical and physical characteristics and reactions under diverse conditions.Diisopropyl m... Chemical warfare agents(CWAs)remain a persistent hazard in many parts of the world,necessitating a deeper exploration of their chemical and physical characteristics and reactions under diverse conditions.Diisopropyl methylphosphonate(DIMP),a commonly used CWA surrogate,is widely studied to enhance our understanding of CWA behavior.The prevailing thermal decomposition model for DIMP,developed approximately 25 years ago,is based on data collected in nitrogen atmospheres at temperatures ranging from 700 K to 800 K.Despite its limitations,this model continues to serve as a foundation for research across various thermal and reactive environments,including combustion studies.Our recent experiments have extended the scope of decomposition analysis by examining DIMP in both nitrogen and zero air across a lower temperature range of 175℃ to 250℃.Infrared spectroscopy results under nitrogen align well with the established model;however,we observed that catalytic effects,stemming from decomposition byproducts and interactions with stainless steel surfaces,alter the reaction kinetics.In zero air environments,we observed a novel infrared absorption band.Spectral fitting suggests this band may represent a combination of propanal and acetone,while GCMS analysis points to vinyl formate and acetone as possible constituents.Although the precise identity of these new products remains unresolved,our findings clearly indicate that the existing decomposition model cannot be reliably extended to lower temperatures or non-nitrogen environments without further revisions. 展开更多
关键词 Chemical warfare agents Simulants Diisopropyl methylphosphonate Thermal decomposition decomposition model PROPANAL Vinyl formate ACETONE
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Advanced isoconversional kinetic analysis of lepidolite sulfation product decomposition reactions for selectively extracting lithium
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作者 Yubo Liu Baozhong Ma +4 位作者 Jiahui Cheng Xiang Li Hui Yang Chengyan Wang Yongqiang Chen 《International Journal of Minerals,Metallurgy and Materials》 2026年第1期217-227,共11页
The sulfation and decomposition process has proven effective in selectively extracting lithium from lepidolite.It is essential to clarify the thermochemical behavior and kinetic parameters of decomposition reactions.A... The sulfation and decomposition process has proven effective in selectively extracting lithium from lepidolite.It is essential to clarify the thermochemical behavior and kinetic parameters of decomposition reactions.Accordingly,comprehensive kinetic study by employing thermalgravimetric analysis at various heating rates was presented in this paper.Two main weight loss regions were observed during heating.The initial region corresponded to the dehydration of crystal water,whereas the subsequent region with overlapping peaks involved complex decomposition reactions.The overlapping peaks were separated into two individual reaction peaks and the activation energy of each peak was calculated using isoconversional kinetics methods.The activation energy of peak 1 exhibited a continual increase as the reaction conversion progressed,while that of peak 2 steadily decreased.The optimal kinetic models,identified as belonging to the random nucleation and subsequent growth category,provided valuable insights into the mechanism of the decomposition reactions.Furthermore,the adjustment factor was introduced to reconstruct the kinetic mechanism models,and the reconstructed models described the kinetic mechanism model more accurately for the decomposition reactions.This study enhanced the understanding of the thermochemical behavior and kinetic parameters of the lepidolite sulfation product decomposition reactions,further providing theoretical basis for promoting the selective extraction of lithium. 展开更多
关键词 LITHIUM LEPIDOLITE decomposition reactions KINETICS isoconversional analysis
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FDEFusion:End-to-End Infrared and Visible Image Fusion Method Based on Frequency Decomposition and Enhancement
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作者 Ming Chen Guoqiang Ma +3 位作者 Ping Qi Fucheng Wang Lin Shen Xiaoya Pi 《Computers, Materials & Continua》 2026年第4期817-839,共23页
In the image fusion field,fusing infrared images(IRIs)and visible images(VIs)excelled is a key area.The differences between IRIs and VIs make it challenging to fuse both types into a high-quality image.Accordingly,eff... In the image fusion field,fusing infrared images(IRIs)and visible images(VIs)excelled is a key area.The differences between IRIs and VIs make it challenging to fuse both types into a high-quality image.Accordingly,efficiently combining the advantages of both images while overcoming their shortcomings is necessary.To handle this challenge,we developed an end-to-end IRI andVI fusionmethod based on frequency decomposition and enhancement.By applying concepts from frequency domain analysis,we used the layering mechanism to better capture the salient thermal targets from the IRIs and the rich textural information from the VIs,respectively,significantly boosting the image fusion quality and effectiveness.In addition,the backbone network combined Restormer Blocks and Dense Blocks;Restormer blocks utilize global attention to extract shallow features.Meanwhile,Dense Blocks ensure the integration between shallow and deep features,thereby avoiding the loss of shallow attributes.Extensive experiments on TNO and MSRS datasets demonstrated that the suggested method achieved state-of-the-art(SOTA)performance in various metrics:Entropy(EN),Mutual Information(MI),Standard Deviation(SD),The Structural Similarity Index Measure(SSIM),Fusion quality(Qabf),MI of the pixel(FMI_(pixel)),and modified Visual Information Fidelity(VIF_(m)). 展开更多
关键词 Infrared images visible images frequency decomposition restormer blocks global attention
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The effect of forest microenvironment on litter decomposition in the Andean tropical mountains
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作者 Dennis Castillo-Figueroa 《Journal of Forestry Research》 2026年第1期152-168,共17页
Upper Andean tropical forests are renowned for their extraordinary biodiversity and heterogeneous environmental conditions.Despite the critical role of litter decomposition in carbon and nutrient cycles,its dynamics i... Upper Andean tropical forests are renowned for their extraordinary biodiversity and heterogeneous environmental conditions.Despite the critical role of litter decomposition in carbon and nutrient cycles,its dynamics in this region remains unexplored at finer scales.This study investigates how micro site conditions influence litter decomposition of 15 upper Andean species over time.A reciprocal translocation field experiment was conducted over 18 months in 14 permanent plots within four sites in Colombian Andean mountain forests.Each plot contained three litterbeds(microsites),each with the 15 species,harvested at 3,6,12 and 18 months,totaling 2520 litterbags.Different forest variables,including canopy openness,leaf area index,slope and depth of litter,were measured in each litterbed.ANOVAs and linear mixed models were used to assess variation between sites and plots respectively,while multiple linear regression analyses evaluated the effects of forest variables on decay rates over time at the micro site scale.Results showed differences in absolute decay rates between sites but consistent relative decay rates,indicating varying magnitudes of decomposition,yet maintaining the same order based on their litter quality.Decay rates varied between species,with more variation in labile species compared to recalcitrant ones.Despite substantial variation in forest characteristics within sites,their influence on litter decomposition was minimal and declined over time.This suggests that,at finer spatial scales,the forest microenvironment plays a lesser role in litter decomposition,with litter quality emerging as the primary driver.This study is a step towards understanding the fine-scale dynamics of litter decomposition in upper Andean tropical forests,highlighting the intricate interplay between microenvironmental factors and decomposition processes. 展开更多
关键词 decomposition Tropical montane forests Forest structure Microenvironmental conditions Microsite scale
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Dual Layer Source Grid Load Storage Collaborative Planning Model Based on Benders Decomposition: Distribution Network Optimization Considering Low-Carbon and Economy
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作者 Jun Guo Maoyuan Chen +2 位作者 Yuyang Li Sibo Feng Guangyu Fu 《Energy Engineering》 2026年第2期104-133,共30页
Theauthor proposes a dual layer source grid load storage collaborative planning model based on Benders decomposition to optimize the low-carbon and economic performance of the distribution network.The model plans the ... Theauthor proposes a dual layer source grid load storage collaborative planning model based on Benders decomposition to optimize the low-carbon and economic performance of the distribution network.The model plans the configuration of photovoltaic(3.8 MW),wind power(2.5 MW),energy storage(2.2 MWh),and SVC(1.2 Mvar)through interaction between upper and lower layers,and modifies lines 2–3,8–9,etc.to improve transmission capacity and voltage stability.The author uses normal distribution and Monte Carlo method to model load uncertainty,and combines Weibull distribution to describe wind speed characteristics.Compared to the traditional three-layer model(TLM),Benders decomposition-based two-layer model(BLBD)has a 58.1%reduction in convergence time(5.36 vs.12.78 h),a 51.1%reduction in iteration times(23 vs.47 times),a 8.07%reduction in total cost(12.436 vs.13.528 million yuan),and a 9.62%reduction in carbon emissions(12,456 vs.13,782 t).After optimization,the peak valley difference decreased from4.1 to 2.9MW,the renewable energy consumption rate reached 93.4%,and the energy storage efficiency was 87.6%.Themodel has been validated in the IEEE 33 node system,demonstrating its superiority in terms of economy,low-carbon,and reliability. 展开更多
关键词 Benders decomposition source grid load storage distribution network planning low-carbon economy optimization model
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Unanticipated strengthening of Cu−19Ni−6Cr−7Mn alloy achieved by synergistic effect of spinodal decomposition and multiscale precipitation
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作者 Shao-lin LI Ying-ying ZHU +3 位作者 Xiu-hua GUO Qiang-song WANG Wen-ming SUN Ke-xing SONG 《Transactions of Nonferrous Metals Society of China》 2026年第1期183-202,共20页
The microstructural evolution of Cu−19Ni−6Cr−7Mn alloy during aging treatment was investigated.After aging for 120 min at 500℃,the alloy exhibited excellent mechanical properties,including a tensile strength of 978 M... The microstructural evolution of Cu−19Ni−6Cr−7Mn alloy during aging treatment was investigated.After aging for 120 min at 500℃,the alloy exhibited excellent mechanical properties,including a tensile strength of 978 MPa and an elastic modulus of 145.8 GPa.After aging for 240 min at 500℃,the elastic modulus of the alloy reached 149.5 GPa,which was among the highest values reported for Cu alloys.It was worth mentioning that the tensile strength increased rapidly from 740 to 934 MPa after aging for 5 min at 500℃,which was close to the maximum tensile strength(978 MPa).Analysis of the underlying strengthening mechanisms and phase transformation behavior revealed that the Cu−19Ni−6Cr−7Mn alloy underwent spinodal decomposition and DO_(22) ordering during the first 5 min of aging at 500℃,and L1_(2) ordered phases and bcc-Cr precipitates appeared.Therefore,the enhanced mechanical properties of the Cu−19Ni−6Cr−7Mn alloy can be attributed to the stress field generated by spinodal decomposition and the presence of nanoscale ordered phase and Cr precipitates. 展开更多
关键词 Cu−Ni−Cr−Mn alloy mechanical properties nanoscale precipitates spinodal decomposition elastic modulus
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Suppression of Dry-Coupled Rubber Layer Interference in Ultrasonic Thickness Measurement:A Comparative Study of Empirical Mode Decomposition Variants
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作者 Weichen Wang Shaofeng Wang +4 位作者 Wenjing Liu Luncai Zhou Erqing Zhang Ting Gao Grigory Petrishin 《Structural Durability & Health Monitoring》 2026年第1期302-316,共15页
In dry-coupled ultrasonic thickness measurement,thick rubber layers introduce high-amplitude parasitic echoes that obscure defect signals and degrade thickness accuracy.Existing methods struggle to resolve overlap-pin... In dry-coupled ultrasonic thickness measurement,thick rubber layers introduce high-amplitude parasitic echoes that obscure defect signals and degrade thickness accuracy.Existing methods struggle to resolve overlap-ping echoes under variable coupling conditions and non-stationary noise.This study proposes a novel dual-criterion framework integrating energy contribution and statistical impulsivity metrics to isolate specimen re-flections from coupling-layer interference.By decomposing A-scan signals into Intrinsic Mode Functions(IMFs),the framework employs energy contribution thresholds(>85%)and kurtosis indices(>3)to autonomously select IMFs containing valid specimen echoes.Hybrid time-frequency thresholding further suppresses interference through amplitude filtering and spectral focusing.Experimental results demonstrate the framework’s robustness,achieving 92.3%thickness accuracy for 5 mm steel specimens with 5 mm rubber coupling,outperforming conventional methods by up to 18.7%.The dual-criterion approach reduces operator dependency by 37%and maintainsΔT<0.03 mm under surface roughness up to 6.3μm,offering a practical solution for industrial nondestructive testing with thick dry-coupled interfaces. 展开更多
关键词 Empirical mode decomposition complete ensemble EMD with adaptive noise(CEEMDAN) dry-coupled ultrasonic testing thickness measurement signal interference suppression
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基于WPD-GA-BP的电动汽车动力电池健康状态预测方法
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作者 黄亮亮 郭拯诗 +4 位作者 何峰 胡鑫 李毓书 段兴兵 曾建邦 《华东交通大学学报》 2026年第1期101-113,共13页
动力电池健康状态(SOH)的精准预测对于延长电动汽车使用寿命和保障行车安全至关重要。针对BP神经网络存在的特征提取能力有限、对初始参数敏感以及易陷入局部最优等问题,基于某车企监控平台数据,提出了一种基于WPD-GA-BP的电动汽车动力... 动力电池健康状态(SOH)的精准预测对于延长电动汽车使用寿命和保障行车安全至关重要。针对BP神经网络存在的特征提取能力有限、对初始参数敏感以及易陷入局部最优等问题,基于某车企监控平台数据,提出了一种基于WPD-GA-BP的电动汽车动力电池SOH预测方法。首先,基于容量增量分析法提取平台数据特征参数,通过皮尔逊相关系数筛选出与SOH显著相关的特征作为模型输入;其次,为丰富特征参数维度,采用小波包分解对标签值进行多尺度重构;最后,采用遗传算法优化BP神经网络的初始权重和阈值,利用更广泛的搜索空间进行全局优化,有效避免局部最优,从而实现对动力电池SOH的精准预测。结果表明:WPD-GA-BP模型与WPD-BP和BP模型相比,最大估计误差低于1.5%,预测性能显著提升。相较于SVR和LSTM模型,WPD-GA-BP模型拟合优度(R2)最高,且MAE和RMSE均为最小,表现出更强的预测精度与稳定性,进一步验证了该方法在动力电池SOH预测中的有效性。 展开更多
关键词 动力电池 健康状态 小波包分解 遗传算法 BP神经网络
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基于WPD-FEEMD和ARIMA-LSTM的油井产量预测方法 被引量:3
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作者 张晓东 李敏 《传感器与微系统》 北大核心 2025年第6期161-164,168,共5页
针对油井生产过程中间歇开关井等人工操作导致产量序列非线性波动、非线性趋势混叠等问题,提出了一种混合二次分解算法和差分自回归综合移动平均—长短期记忆网络(ARIMA-LSTM)的单井产量预测方法。该方法首先采用小波包分解(WPD)将原始... 针对油井生产过程中间歇开关井等人工操作导致产量序列非线性波动、非线性趋势混叠等问题,提出了一种混合二次分解算法和差分自回归综合移动平均—长短期记忆网络(ARIMA-LSTM)的单井产量预测方法。该方法首先采用小波包分解(WPD)将原始产量序列分解为低频分量和高频分量;然后采用快速集合经验模态分解(FEEMD)分解高频分量,进一步降低高频分量的非平稳性,同时去除模式混叠;针对各子序列,分别构建基于ARIMA-LSTM的时序预测模型,该模型使用ARIMA过滤序列中的线性趋势,并将残差传递给Bi-LSTM提取非线性趋势;最后融合各子序列预测结果,得到油井产量预测值。算例研究结果表明,相较于支持向量回归(SVR)、LSTM等模型,所提方法具有更高的预测精度。 展开更多
关键词 产量预测 人工操作 小波包分解 快速集合经验模态分解 自回归综合移动平均 长短期记忆
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基于WPD-ISSA-CA-CNN模型的电厂碳排放预测
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作者 池小波 续泽晋 +1 位作者 贾新春 张伟杰 《控制工程》 北大核心 2025年第8期1387-1394,共8页
碳排放的准确预测有利于制定合理的碳减排策略。目前,针对电厂碳排放的研究较少,且传统预测模型训练时间过长。基于此,提出一种分量增广输入的WPD-ISSA-CA-CNN碳排放量预测模型,该模型创新性地构建“分解-增广融合预测”策略。首先,利... 碳排放的准确预测有利于制定合理的碳减排策略。目前,针对电厂碳排放的研究较少,且传统预测模型训练时间过长。基于此,提出一种分量增广输入的WPD-ISSA-CA-CNN碳排放量预测模型,该模型创新性地构建“分解-增广融合预测”策略。首先,利用小波包分解(wavelet packet decomposition,WPD)算法将信号按频率特性分解为子序列,再将全部分量增广(component augmentation,CA)作为模型输入,以减少模型的训练时间。其次,考虑到该模型超参数选择困难,利用多策略融合的改进麻雀搜索算法(improved sparrow search algorithm,ISSA)对卷积神经网络(convolutional neural networks,CNNs)的超参数进行寻优。以山西某发电厂2×25 MW锅炉的历史数据为样本,利用5种评价指标将所提模型与BP、LSTM、CNN及其混合模型进行对比。结果表明,所提混合模型在预测火力发电碳排放中各指标均有最佳的准确度且模型训练速度明显提升。 展开更多
关键词 碳排放预测 小波包分解 改进麻雀搜索算法 卷积神经网络
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基于WPD与峭度的反应堆下栅板微弱碰磨机械噪声识别技术
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作者 刘佳鑫 包渝锋 +4 位作者 者娜 王进 段智勇 刘才学 杨泰波 《核动力工程》 北大核心 2025年第5期217-223,共7页
反应堆一回路松脱件在冷却剂的带动下运动至堆内下栅板处,进而与下栅板产生碰磨或堵塞导流孔。下栅板碰磨机械噪声经过内部结构传递至压力容器顶盖后会产生信号衰减并被反应堆背景噪声掩盖,无法进行松动碰磨识别。本研究首先进行了模拟... 反应堆一回路松脱件在冷却剂的带动下运动至堆内下栅板处,进而与下栅板产生碰磨或堵塞导流孔。下栅板碰磨机械噪声经过内部结构传递至压力容器顶盖后会产生信号衰减并被反应堆背景噪声掩盖,无法进行松动碰磨识别。本研究首先进行了模拟试验,获得了背景噪声数据和下栅板微弱碰磨机械噪声数据;然后基于小波包分解(WPD)结合峭度的方法对淹没在背景噪声中的下栅板微弱碰磨信号进行降噪;最后基于降噪后的碰磨信号进行松动碰磨识别,并开发了堆内下栅板松动碰磨事件识别程序。测试结果表明,该降噪方法有效,同时开发的程序可有效地识别出淹没在背景噪声中的反应堆下栅板碰磨事件信号。 展开更多
关键词 下栅板 微弱碰磨机械噪声 小波包分解(wpd) 峭度
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基于IVMD-WPD的绝缘子脱粘信号提取方法设计
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作者 周志鹏 陈友兴 +1 位作者 王召巴 逯丰亮 《计算机测量与控制》 2025年第3期226-234,共9页
当前传统信号处理方法无法有效解决针式复合绝缘子脱粘超声信号模态混叠和噪声较大的问题,为此提出了一种改进变分模态分解联合小波包分解的信号提取方法;此方法通过将樽海鞘群寻优算法替代现有国内外主流的针对变分模态分解的优化算法... 当前传统信号处理方法无法有效解决针式复合绝缘子脱粘超声信号模态混叠和噪声较大的问题,为此提出了一种改进变分模态分解联合小波包分解的信号提取方法;此方法通过将樽海鞘群寻优算法替代现有国内外主流的针对变分模态分解的优化算法,之后将分解后的各分量利用小波包去噪算法进行处理和重构,从而得到较干净的脱粘信号;经模拟实验,该方法能在不改变寻优效果的同时,有效提升针对模态数和惩罚因子的寻优速度,较大幅度提升模拟加噪信号的处理效果;经实物实验结果表明,该方法能有效解决脱粘信号第二回波的模态混叠问题和信号中存在较大电路固有噪声的问题,同时处理后的B扫图像成像效果也有较大改善。 展开更多
关键词 复合绝缘子 相控阵超声 脱粘缺陷 樽海鞘群优化算法 变分模态分解 小波包去噪
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Coastal ozone dynamics and formation regime in Eastern China:Integrating trend decomposition and machine learning techniques 被引量:1
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作者 Lei Tong Zhuoliang Gu +8 位作者 Xuchu Zhu Cenyan Huang Baoye Hu Yasheng Shi Yang Meng Jie Zheng Mengmeng He Jun He Hang Xiao 《Journal of Environmental Sciences》 2025年第9期597-612,共16页
Machine-learning is a robust technique for understanding pollution characteristics of surface ozone,which are at high levels in urban China.This study introduced an innovative approach combining trend decomposition wi... Machine-learning is a robust technique for understanding pollution characteristics of surface ozone,which are at high levels in urban China.This study introduced an innovative approach combining trend decomposition with Random Forest algorithm to investigate ozone dynamics and formation regimes in a coastal area of China.During the period of 2017–2022,significant inter-annual fluctuations emerged,with peaks in mid-2017 attributed to volatile organic compounds(VOCs),and in late-2019 influenced by air temperature.Multifaceted periodicities(daily,weekly,holiday,and yearly)in ozone were revealed,elucidating substantial influences of daily and yearly components on ozone periodicity.A VOC-sensitive ozone formation regime was identified,characterized by lower VOCs/NO_(x) ratios(average=0.88)and significant positive correlations between ozone and VOCs.This interplay manifested in elevated ozone duringweekends,holidays,and pandemic lockdowns.Key variables influencing ozone across diverse timescaleswere uncovered,with solar radiation and temperature driving daily and yearly ozone variations,respectively.Precursor substances,particularly VOCs,significantly shaped weekly/holiday patterns and long-term trends of ozone.Specifically,acetone,ethane,hexanal,and toluene had a notable impact on the multi-year ozone trend,emphasizing the urgency of VOC regulation.Furthermore,our observations indicated that NO_(x) primarily drived the stochastic variations in ozone,a distinguishing characteristic of regions with heavy traffic.This research provides novel insights into ozone dynamics in coastal urban areas and highlights the importance of integrating statistical and machinelearning methods in atmospheric pollution studies,with implications for targeted mitigation strategies beyond this specific region and pollutant. 展开更多
关键词 Time series decomposition Random forest VOC-sensitive Long-term trend Port area
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DecMamba:Mamba Utilizing Series Decomposition for Multivariate Time Series Forecasting
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作者 Jianxin Feng Jianhao Zhang +2 位作者 Ge Cao Zhiguo Liu Yuanming Ding 《Computers, Materials & Continua》 SCIE EI 2025年第1期1049-1068,共20页
Multivariate time series forecasting iswidely used in traffic planning,weather forecasting,and energy consumption.Series decomposition algorithms can help models better understand the underlying patterns of the origin... Multivariate time series forecasting iswidely used in traffic planning,weather forecasting,and energy consumption.Series decomposition algorithms can help models better understand the underlying patterns of the original series to improve the forecasting accuracy of multivariate time series.However,the decomposition kernel of previous decomposition-based models is fixed,and these models have not considered the differences in frequency fluctuations between components.These problems make it difficult to analyze the intricate temporal variations of real-world time series.In this paper,we propose a series decomposition-based Mamba model,DecMamba,to obtain the intricate temporal dependencies and the dependencies among different variables of multivariate time series.A variable-level adaptive kernel combination search module is designed to interact with information on different trends and periods between variables.Two backbone structures are proposed to emphasize the differences in frequency fluctuations of seasonal and trend components.Mamba with superior performance is used instead of a Transformer in backbone structures to capture the dependencies among different variables.A new embedding block is designed to capture the temporal features better,especially for the high-frequency seasonal component whose semantic information is difficult to acquire.A gating mechanism is introduced to the decoder in the seasonal backbone to improve the prediction accuracy.A comparison with ten state-of-the-art models on seven real-world datasets demonstrates that DecMamba can better model the temporal dependencies and the dependencies among different variables,guaranteeing better prediction performance for multivariate time series. 展开更多
关键词 Data prediction time series Mamba series decomposition
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Attenuating reductive decomposition of fiuorinated electrolytes for high-voltage lithium metal batteries 被引量:1
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作者 Zhen-Zhen Dong Jin-Hao Zhang +4 位作者 Lin Zhu Xiao-Zhong Fan Zhen-Guo Liu Yi-Bo Yan Long Kong 《Chinese Chemical Letters》 2025年第4期416-419,共4页
Fluoride-based electrolyte exhibits extraordinarily high oxidative stability in high-voltage lithium metal batteries(h-LMBs) due to the inherent low highest occupied molecular orbital(HOMO) of fiuorinated solvents. Ho... Fluoride-based electrolyte exhibits extraordinarily high oxidative stability in high-voltage lithium metal batteries(h-LMBs) due to the inherent low highest occupied molecular orbital(HOMO) of fiuorinated solvents. However, such fascinating properties do not bring long-term cyclability of h-LMBs. One of critical challenges is the interface instability in contacting with the Li metal anode, as fiuorinated solvents are highly susceptible to exceptionally reductive metallic Li attributed to its low lowest unoccupied molecular orbital(LUMO), which leads to significant consumption of the fiuorinated components upon cycling.Herein, attenuating reductive decomposition of fiuorinated electrolytes is proposed to circumvent rapid electrolyte consumption. Specifically, the vinylene carbonate(VC) is selected to tame the reduction decomposition by preferentially forming protective layer on the Li anode. This work, experimentally and computationally, demonstrates the importance of pre-passivation of Li metal anodes at high voltage to attenuate the decomposition of fiuoroethylene carbonate(FEC). It is expected to enrich the understanding of how VC attenuate the reactivity of FEC, thereby extending the cycle life of fiuorinated electrolytes in high-voltage Li-metal batteries. 展开更多
关键词 Li metal batteries Solid electrolyte interphase High voltage Fluorinated electrolyte Electrolyte decomposition
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Jamming recognition method based on wavelet packet decomposition and improved deep learning 被引量:1
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作者 Qi Wu Gang Li +4 位作者 Xiang Wang Hao Luo Lianghong Li Qianbin Chen Xiaorong Jing 《Digital Communications and Networks》 2025年第5期1469-1478,共10页
To overcome the challenges of poor real-time performance,limited scalability,and low intelligence in conventional jamming pattern recognition methods,this paper proposes a method based on Wavelet Packet Decomposition(... To overcome the challenges of poor real-time performance,limited scalability,and low intelligence in conventional jamming pattern recognition methods,this paper proposes a method based on Wavelet Packet Decomposition(WPD)and enhanced deep learning techniques.In the proposed method,an agent at the receiver processes the received signal using WPD to generate an initial Spectrogram Waterfall(SW),which is subsequently segmented using a sliding window to serve as the input for the jamming recognition network.The network employs a bilateral filter to preprocess the input SW,thereby enhancing the edge features of the jamming signals.To extract abstract features,depthwise separable convolution is utilized instead of traditional convolution,thereby reducing the network’s parameter count and enhancing real-time performance.A pyramid pooling layer is integrated before the fully connected layer to enable the network to process input SW of varying sizes,thus enhancing scalability.During network training,adaptive moment estimation is employed as the optimizer,allowing the network to dynamically adjust the learning rate and accelerate convergence.A comprehensive comparison between the proposed jamming recognition network and six other models is conducted,along with Ablation Experiments(AE)based on numerical simulations.Simulation results demonstrate that the proposed method based on WPD and enhanced deep learning achieves high-precision recognition of various jamming patterns while maintaining a favorable balance among prediction accuracy,network complexity,and prediction time. 展开更多
关键词 Wavelet packet decomposition Improved deep learning Spectrogram waterfall Pyramid pooling Jamming recognition
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A Multi-Objective Particle Swarm Optimization Algorithm Based on Decomposition and Multi-Selection Strategy
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作者 Li Ma Cai Dai +1 位作者 Xingsi Xue Cheng Peng 《Computers, Materials & Continua》 SCIE EI 2025年第1期997-1026,共30页
The multi-objective particle swarm optimization algorithm(MOPSO)is widely used to solve multi-objective optimization problems.In the article,amulti-objective particle swarm optimization algorithmbased on decomposition... The multi-objective particle swarm optimization algorithm(MOPSO)is widely used to solve multi-objective optimization problems.In the article,amulti-objective particle swarm optimization algorithmbased on decomposition and multi-selection strategy is proposed to improve the search efficiency.First,two update strategies based on decomposition are used to update the evolving population and external archive,respectively.Second,a multiselection strategy is designed.The first strategy is for the subspace without a non-dominated solution.Among the neighbor particles,the particle with the smallest penalty-based boundary intersection value is selected as the global optimal solution and the particle far away fromthe search particle and the global optimal solution is selected as the personal optimal solution to enhance global search.The second strategy is for the subspace with a non-dominated solution.In the neighbor particles,two particles are randomly selected,one as the global optimal solution and the other as the personal optimal solution,to enhance local search.The third strategy is for Pareto optimal front(PF)discontinuity,which is identified by the cumulative number of iterations of the subspace without non-dominated solutions.In the subsequent iteration,a new probability distribution is used to select from the remaining subspaces to search.Third,an adaptive inertia weight update strategy based on the dominated degree is designed to further improve the search efficiency.Finally,the proposed algorithmis compared with fivemulti-objective particle swarm optimization algorithms and five multi-objective evolutionary algorithms on 22 test problems.The results show that the proposed algorithm has better performance. 展开更多
关键词 Multi-objective optimization multi-objective particle swarm optimization decomposition multi-selection strategy
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A C_(6)-decomposition of theλ-fold Line Graph of K_(x,y)
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作者 XIN Yue YANG Weihua 《数学进展》 北大核心 2025年第6期1205-1222,共18页
In this paper,we prove that L(K_(x,y))(λ),theλ-fold line graph of the complete bipartite graph Ka,y,has a C_(6)-decomposition if and only if ry≥6,λxy(c+y-2)=0(mod 12)and(x+y)=0(mod 2),where x,y are nonnegative int... In this paper,we prove that L(K_(x,y))(λ),theλ-fold line graph of the complete bipartite graph Ka,y,has a C_(6)-decomposition if and only if ry≥6,λxy(c+y-2)=0(mod 12)and(x+y)=0(mod 2),where x,y are nonnegative integers and(x,y)≠(2,4)or(2,5). 展开更多
关键词 cycle decomposition line graph complete bipartite graph
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基于SSA-GPR和WPD的电池剩余寿命预测
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作者 傅鑫 王靖岳 +1 位作者 朱楠 丁建明 《科学技术与工程》 北大核心 2025年第23期10023-10030,共8页
快速准确地获取锂离子电池的剩余使用寿命,对提高设备的可靠性有着重要意义。针对传统高斯过程回归(gaussian process regression,GPR)超参数寻优效果差,寻优困难,利用麻雀搜索算法(sparrow search algorithm,SSA)对高斯过程回归进行超... 快速准确地获取锂离子电池的剩余使用寿命,对提高设备的可靠性有着重要意义。针对传统高斯过程回归(gaussian process regression,GPR)超参数寻优效果差,寻优困难,利用麻雀搜索算法(sparrow search algorithm,SSA)对高斯过程回归进行超参数优化,同时利用小波包分解(wavelet packet decomposition,WPD)降低数据集复杂度,提取相关信息,增加预测精度,提出了将小波包分解和高斯过程回归以及麻雀搜索算法相结合,建立剩余使用寿命(remaining useful life,RUL)预测模型。首先,等压降放电时间曲线作为间接健康因子,电池容量作为直接健康因子,利用Pearson系数验证二者的相关性。其次,利用小波包分解对直接健康因子与间接健康因子进行分解,提取出高频信号和低频信号并将这些信号分为训练集与测试集。然后,建立高斯过程回归模型,利用SSA对该模型进行超参数优化,分别对不同信号进行预测、叠加,实现剩余使用寿命的准确预测。最后,利用公开数据集进行验证。结果表明,本文提出的模型平均绝对误差不超过0.0065、平均绝对百分比误差不超过0.0052,均方根误差不超过0.0078,拥有良好的预测精度和泛化性。 展开更多
关键词 剩余使用寿命 麻雀搜索算法 高斯过程回归 小波包分解
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