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Assessing the Variability of Extreme Weather Events and Its Influence on Marine Accidents along the Northern Coast of Tanzania
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作者 Faki A. Ali Kombo Hamad Kai Sara Abdalla Khamis 《American Journal of Climate Change》 2024年第3期499-521,共23页
The marine accidents are among the main components of the Zanzibar Disaster Management Policy (2011) and the Zanzibar Blue Economy Policy (2020). These policies aimed to institute legal frame works and procedures for ... The marine accidents are among the main components of the Zanzibar Disaster Management Policy (2011) and the Zanzibar Blue Economy Policy (2020). These policies aimed to institute legal frame works and procedures for reducing both the frequency of marine accidents and their associated fatalities. These fatalities include deaths, permanent disabilities and loss of properties which may result into increased poverty levels as per the sustainable development goal one (SDG1) which stipulates on ending the poverty in all its forms everywhere. Thus, in the way to support these Government efforts, the influence of climate and weather on marine accidents along Zanzibar and Pemba Channels was investigated. The study used the 10 years (2013-2022) records of daily rainfall and hourly wind speed acquired from Tanzania Meteorological Authority (TMA) (for the observation stations of Zanzibar, Pemba, Dares Salaam and Tanga), and the significant wave heights data, which was freely downloaded from Globally Forecasting System (GFS-World model of 13 km resolution). The marine accident records were collected from TASAC and Zanzibar Maritime Authority (ZMA), and the anecdotal information was collected from heads of quay and boat captains in different areas of Zanzibar. The Mann Kendal test, was used to determine the slopes and trends direction of used weather parameters, while the Pearson correlations analysis and t-tests were used to understand the significance of the underlying relationship between the weather and marine accidents. The paired t-test was used to evaluate the extent to which weather parameters affect the marine accidents. Results revealed that the variability of extreme weather events (rainfall, ocean waves and wind speed) was seen to be among the key factors for most of the recorded marine accidents. For instance, in Pemba high rainfall showed an increasing trend of extreme rainfall events, while Zanzibar has shown a decreasing trend of these events. As for extreme wind events, results show that Dar es Salaam and Tanga had an increasing trend, while Zanzibar and Pemba had shown a decreasing trend. As for the monthly variability of frequencies of extreme rainfall events, March to May (MAM) season was shown to have the highest frequencies over all stations with the peaks at Zanzibar and Pemba. On the other hand, high frequency of extreme wind speed was observed from May to September with peaks in June to July, and the highest strength was observed during 09:00 to 15:00 GMT. Moreover, results revealed an increasing trend of marine accidents caused by bad weather except during November. Also, results showed that bad weather conditions contributed to 48 (32%) of all 150 recorded accidents. Further results revealed significant correlation between the extreme wind and marine accidents, with the highest strong correlation of r = 0.71 (at p ≤ 0.007) and r = 0.75 (at p ≤ 0.009) at Tanga and Pemba, indicating the occurrence of more marine accidents at the Pemba channel. Indeed, strong correlation of r = 0.6 between extreme rainfall events and marine accidents was shown in Pemba, while the correlations between extremely significant wave heights and marine accidents were r = 0.41 (at p ≤ 0.006) and r = 0.34 (p ≤ 0.0006) for Pemba and Zanzibar Channel, respectively. In conclusion, the study has shown high influence between marine accidents and bad weather events with more impacts in Pemba and Zanzibar. Thus, the study calls for more work to be undertaken to raise the awareness on marine accidents as a way to alleviate the poverty and enhance the sustainable blue economy. 展开更多
关键词 Marine Accidents bad weather events extreme wind speed extreme Rainfall Correlation
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Extreme Values of Wind Speed over the Kara Sea Based on the ERA5 Dataset
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作者 Alexander Kislov Tatyana Matveeva 《Atmospheric and Climate Sciences》 2021年第1期98-113,共16页
Extreme values of wind speed were studied based on the highly detailed ERA5 dataset covering the central part of the Kara Sea. Cases in which the ice coverage of the cells exceeded 15% were filtered. Our study shows t... Extreme values of wind speed were studied based on the highly detailed ERA5 dataset covering the central part of the Kara Sea. Cases in which the ice coverage of the cells exceeded 15% were filtered. Our study shows that the wind speed extrema obtained from station observations, as well as from modelling results in the framework of mesoscale models, can be divided into two groups according to their probability distribution laws. One group is specifically designated as black swans, with the other referred to as dragons (or dragon-kings). In this study we determined that the data of ERA5 accurately described the swans, but did not fully reproduce extrema related to the dragons;these extrema were identified only in half of ERA5 grid points. Weibull probability distribution function (PDF) parameters were identified in only a quarter of the pixels. The parameters were connected almost deterministically. This converted the Weibull function into a one-parameter dependence. It was not clear whether this uniqueness was a consequence of the features of the calculation algorithm used in ERA5, or whether it was a consequence of a relatively small area being considered, which had the same wind regime. Extremes of wind speed arise as mesoscale features and are associated with hydrodynamic features of the wind flow. If the flow was non-geostrophic and if its trajectory had a substantial curvature, then the extreme velocities were distributed according to a rule similar to the Weibull law. 展开更多
关键词 ERA5 Kara Sea Weibull Probability Distribution Function wind speed Hydrodynamics and Statistics of extreme events
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基于案例推理的极端天气下风功率预测系统研究 被引量:1
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作者 张艳锋 郭建华 +2 位作者 宋举 田鹏辉 张高源 《电工技术》 2023年第18期64-67,共4页
提高风功率预测精度是保障风电并网安全运行的关键,同时也是电力市场现货交易决策制定的支撑,而间歇性、波动性风速是影响风功率预测精度的重要因素。提出了一种基于案例推理的极端天气下风功率预测方法,首先利用混沌理论建立间歇性风... 提高风功率预测精度是保障风电并网安全运行的关键,同时也是电力市场现货交易决策制定的支撑,而间歇性、波动性风速是影响风功率预测精度的重要因素。提出了一种基于案例推理的极端天气下风功率预测方法,首先利用混沌理论建立间歇性风速模型,进而确定极端天气预测案例库,其次建立基于案例推理的风功率预测模型,最后结合山西省大同市某风电场的实际运行数据进行验证,并与广义回归神经网络(GRNN)、最小二乘支持向量机(LSSVM)和遗传BP神经网络(GABP)三种方法的预测结果进行对比。仿真结果表明,该方法能够有效提升风电功率预测精度,或可为极端天气时的风功率预测研究提供借鉴。 展开更多
关键词 风功率预测 间歇性风速 极端天气 混沌理论
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影响中国的热带气旋极端事件年代际变化 被引量:12
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作者 赵珊珊 王小玲 《气候变化研究进展》 CSCD 北大核心 2012年第1期16-21,共6页
利用1949—2009年影响中国的热带气旋风雨资料以及登陆信息,研究影响热带气旋极端事件的年代际变化特征。结果表明:热带气旋登陆极端偏早或偏晚事件在1970和2000年代发生较少。热带气旋登陆强度(中心附近最大风力和最低气压)极端事件在2... 利用1949—2009年影响中国的热带气旋风雨资料以及登陆信息,研究影响热带气旋极端事件的年代际变化特征。结果表明:热带气旋登陆极端偏早或偏晚事件在1970和2000年代发生较少。热带气旋登陆强度(中心附近最大风力和最低气压)极端事件在2000年代发生频数最高。热带气旋降水影响时间极端事件在1970年代频数最多,大风影响时间极端事件在1980年代频数最多。日降水量和过程降水量的极值站数在1960年代最多,日最大风速极值站数在1980年代最多。 展开更多
关键词 热带气旋 极端事件 年代际变化 最大风速 登陆日期 最大降水 最低气压
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基于OS-ELM的风速修正及短期风电功率预测 被引量:3
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作者 张颖超 肖寅 +1 位作者 邓华 王璐 《电子技术应用》 北大核心 2016年第2期110-113,121,共5页
随着时间的推移,风电场风电功率预测模型的适用性逐渐降低,导致预测精度下降。为了解决该问题,基于在线序列-极限学习机(OS-ELM)算法提出了风电场短期风电功率预测模型的在线更新策略,建立的OS-ELM模型将风电场的历史数据固化到隐含层... 随着时间的推移,风电场风电功率预测模型的适用性逐渐降低,导致预测精度下降。为了解决该问题,基于在线序列-极限学习机(OS-ELM)算法提出了风电场短期风电功率预测模型的在线更新策略,建立的OS-ELM模型将风电场的历史数据固化到隐含层输出矩阵中,模型更新时,只需将新产生的数据对当前网络进行更新,大大降低了计算所需的资源。采用极限学习机(ELM)算法对数值天气预报(NWP)的预测风速进行修正,并根据风电功率的置信区间对预测功率进行二次修正。实验结果表明,采用OS-ELM算法更新后的模型适用性增强,预测精度提高;采用基于风电功率置信区间的功率修正模型后,风电功率的预测精度明显提高。 展开更多
关键词 在线序列-极限学习机 数值天气预报 风速修正 功率修正
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考虑风电场功率爬坡的超短期组合预测 被引量:19
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作者 杨茂 于欣楠 《东北电力大学学报》 2022年第1期63-70,共8页
随着大规模风力发电接入电力系统,准确的风电场功率预测对于整个电力系统的安全稳定运行均意义重大.而风电功率爬坡事件则是产生风电功率预测误差的重要原因,尤其是当风速数据变化较快时,所引发的功率爬坡会导致预测误差较大.因此研究... 随着大规模风力发电接入电力系统,准确的风电场功率预测对于整个电力系统的安全稳定运行均意义重大.而风电功率爬坡事件则是产生风电功率预测误差的重要原因,尤其是当风速数据变化较快时,所引发的功率爬坡会导致预测误差较大.因此研究考虑风电场功率爬坡事件的预测就显得日益紧迫.文中基于极限学习机理论,提出了一种考虑风电场功率爬坡的超短期组合预测模型.经算例验证表明,文中方法能够准确识别风电场的功率爬坡事件并有效提高风电功率超短期预测的精度,具有一定的理论意义和实用价值. 展开更多
关键词 风电爬坡事件 极限学习机 数值天气预报 风电功率预测
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