针对局部遮阴环境下传统灰狼优化(Gray wolf optimization,GWO)算法在跟踪最大功率点时P-U特性曲线出现多峰值、后期收敛速度慢、稳态精度低等问题,结合灰狼优化算法和扰动观察法(Perturbation and observation,P&O)各自的优势,提...针对局部遮阴环境下传统灰狼优化(Gray wolf optimization,GWO)算法在跟踪最大功率点时P-U特性曲线出现多峰值、后期收敛速度慢、稳态精度低等问题,结合灰狼优化算法和扰动观察法(Perturbation and observation,P&O)各自的优势,提出了基于GWO-P&O的混合优化最大功率点跟踪(Maximum power point tracking,MPPT)算法。首先,采用灰狼优化算法逐渐向光伏的全局最大功率点靠近。其次,在灰狼优化算法收敛后期引入P&O法,既保持了灰狼优化算法较高的稳态精度,又能以较快速度寻找到局部最大功率点。最后,在不同环境工况下,将所提出的GWO-P&O方法与传统GWO算法进行对比。结果表明,改进的GWO-P&O算法在保证良好稳态性能的同时,一定程度上提高了GWO算法后期跟踪最大功率时的收敛速度。展开更多
当前建筑业迅速发展,但随之而来的是频频发生的建筑安全事故,造成不可逆转的损失和伤害。虽然近些年来在建筑安全事故控制方面的研究已取得一定的成果,但建筑安全事故仍未得到有效控制。针对建筑业市政工程安全事故总数和死亡人数,探究...当前建筑业迅速发展,但随之而来的是频频发生的建筑安全事故,造成不可逆转的损失和伤害。虽然近些年来在建筑安全事故控制方面的研究已取得一定的成果,但建筑安全事故仍未得到有效控制。针对建筑业市政工程安全事故总数和死亡人数,探究二者之间的关系,构建灰狼优化算法-支持向量回归机(Grey Wolf Optimization and Support Vactor Regression,GWO-SVR)组合模型,收集2008—2020年每个月的建筑安全事故数据及死亡人数数据集,发现二者之间成正向相关关系,以建筑安全事故数为特征对建筑死亡人数进行预测,精度达到95%以上,对建筑安全资源与人力投入有较大参考价值,有助于提升建筑安全管理水平。展开更多
The grey wolf optimizer(GWO)is a swarm-based intelligence optimization algorithm by simulating the steps of searching,encircling,and attacking prey in the process of wolf hunting.Along with its advantages of simple pr...The grey wolf optimizer(GWO)is a swarm-based intelligence optimization algorithm by simulating the steps of searching,encircling,and attacking prey in the process of wolf hunting.Along with its advantages of simple principle and few parameters setting,GWO bears drawbacks such as low solution accuracy and slow convergence speed.A few recent advanced GWOs are proposed to try to overcome these disadvantages.However,they are either difficult to apply to large-scale problems due to high time complexity or easily lead to early convergence.To solve the abovementioned issues,a high-accuracy variable grey wolf optimizer(VGWO)with low time complexity is proposed in this study.VGWO first uses the symmetrical wolf strategy to generate an initial population of individuals to lay the foundation for the global seek of the algorithm,and then inspired by the simulated annealing algorithm and the differential evolution algorithm,a mutation operation for generating a new mutant individual is performed on three wolves which are randomly selected in the current wolf individuals while after each iteration.A vectorized Manhattan distance calculation method is specifically designed to evaluate the probability of selecting the mutant individual based on its status in the current wolf population for the purpose of dynamically balancing global search and fast convergence capability of VGWO.A series of experiments are conducted on 19 benchmark functions from CEC2014 and CEC2020 and three real-world engineering cases.For 19 benchmark functions,VGWO’s optimization results place first in 80%of comparisons to the state-of-art GWOs and the CEC2020 competition winner.A further evaluation based on the Friedman test,VGWO also outperforms all other algorithms statistically in terms of robustness with a better average ranking value.展开更多
基金supported by National Natural Science Foundation of China(No.52067013)Natural Science Foundation of Gansu Province(No.21JR7RA280)。
文摘针对局部遮阴环境下传统灰狼优化(Gray wolf optimization,GWO)算法在跟踪最大功率点时P-U特性曲线出现多峰值、后期收敛速度慢、稳态精度低等问题,结合灰狼优化算法和扰动观察法(Perturbation and observation,P&O)各自的优势,提出了基于GWO-P&O的混合优化最大功率点跟踪(Maximum power point tracking,MPPT)算法。首先,采用灰狼优化算法逐渐向光伏的全局最大功率点靠近。其次,在灰狼优化算法收敛后期引入P&O法,既保持了灰狼优化算法较高的稳态精度,又能以较快速度寻找到局部最大功率点。最后,在不同环境工况下,将所提出的GWO-P&O方法与传统GWO算法进行对比。结果表明,改进的GWO-P&O算法在保证良好稳态性能的同时,一定程度上提高了GWO算法后期跟踪最大功率时的收敛速度。
文摘当前建筑业迅速发展,但随之而来的是频频发生的建筑安全事故,造成不可逆转的损失和伤害。虽然近些年来在建筑安全事故控制方面的研究已取得一定的成果,但建筑安全事故仍未得到有效控制。针对建筑业市政工程安全事故总数和死亡人数,探究二者之间的关系,构建灰狼优化算法-支持向量回归机(Grey Wolf Optimization and Support Vactor Regression,GWO-SVR)组合模型,收集2008—2020年每个月的建筑安全事故数据及死亡人数数据集,发现二者之间成正向相关关系,以建筑安全事故数为特征对建筑死亡人数进行预测,精度达到95%以上,对建筑安全资源与人力投入有较大参考价值,有助于提升建筑安全管理水平。
文摘The grey wolf optimizer(GWO)is a swarm-based intelligence optimization algorithm by simulating the steps of searching,encircling,and attacking prey in the process of wolf hunting.Along with its advantages of simple principle and few parameters setting,GWO bears drawbacks such as low solution accuracy and slow convergence speed.A few recent advanced GWOs are proposed to try to overcome these disadvantages.However,they are either difficult to apply to large-scale problems due to high time complexity or easily lead to early convergence.To solve the abovementioned issues,a high-accuracy variable grey wolf optimizer(VGWO)with low time complexity is proposed in this study.VGWO first uses the symmetrical wolf strategy to generate an initial population of individuals to lay the foundation for the global seek of the algorithm,and then inspired by the simulated annealing algorithm and the differential evolution algorithm,a mutation operation for generating a new mutant individual is performed on three wolves which are randomly selected in the current wolf individuals while after each iteration.A vectorized Manhattan distance calculation method is specifically designed to evaluate the probability of selecting the mutant individual based on its status in the current wolf population for the purpose of dynamically balancing global search and fast convergence capability of VGWO.A series of experiments are conducted on 19 benchmark functions from CEC2014 and CEC2020 and three real-world engineering cases.For 19 benchmark functions,VGWO’s optimization results place first in 80%of comparisons to the state-of-art GWOs and the CEC2020 competition winner.A further evaluation based on the Friedman test,VGWO also outperforms all other algorithms statistically in terms of robustness with a better average ranking value.
文摘锂离子电池剩余使用寿命预测在电池管理系统中发挥着重要作用,准确预测其剩余使用寿命能够保障电池的安全稳定运行。由于支持向量回归SVR(support vector regression)参数内核选择较为困难,为此提出灰狼优化—支持向量回归GWO-SVR(gray wolf optimization-SVR)方法,使用灰狼算法优化其内核参数,根据NASA预测中心提供的电池数据集对该方法进行了验证。通过与SVR方法进行对比发现,所提GWO-SVR方法的预测精度得到显著提高;在此基础上与ALO-SVR方法进行对比,证明所提方法平均相对误差降低了7.16%,预测精度更高,有效地提高了锂离子电池剩余寿命预测的精确性。