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首页> 外文期刊>Journal of intelligent material systems and structures >Conjugate unscented transformation- based uncertainty analysis of energy harvesters
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Conjugate unscented transformation- based uncertainty analysis of energy harvesters

机译:结合基于无味转化的能量收集器不确定性分析

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This article presents a probabilistic approach to investigate the effect of parametric uncertainties on the mean power, tip deflection, and tip velocity of linear and nonlinear energy harvesting systems. Recently developed conjugate unscented transformation algorithm is used to compute the statistical moments of the output variables with multidimensional Gaussian uncertainty in parameters. The principle of maximum entropy is used to construct the probability density function of output variables from the knowledge of obtained statistical moments. The probability density functions for mean power were significantly complicated in shape with two and three distinct peaks for the nonlinear monostable and nonlinear bistable harvesters, respectively. Monte-Carlo simulations with N = 8 x 10(4) samples for monostable harvester and N = 6.5 x 10(4) samples for bistable harvester were used for validating the probability density functions. It is concluded that conjugate unscented transformation methodology affords a significant computational advantage without compromising accuracy. In addition, using conjugate unscented transformation method, we show that the dependence of mean power on parameters (excitation frequency, excitation amplitude, etc.), when multidimensional uncertainties are present, is decidedly different relative to a purely deterministic trend. The discrepancy in predicted power between the deterministic and uncertain trends for the monostable harvester, for instance, reach a maximum of 100%, 234%, and 110% for base frequency, base acceleration, and magnet gap, respectively. The deterministic trend consistently overestimates the harvested power relative to the uncertain trends. This work, therefore, may have applications in evaluating "worst case scenario" for harvested power. The major advantage of the presented methodology relative to extant techniques in energy harvesting literature is the accurate and computationally effective applicability to multidimensional uncertainty in parameters.
机译:本文提供了一种概率方法,用于研究参数不确定性对线性和非线性能量收集系统的平均功率,叶尖偏转和叶尖速度的影响。最近开发的共轭无味变换算法用于计算具有多维高斯不确定性参数的输出变量的统计矩。最大熵原理用于根据获得的统计矩来构造输出变量的概率密度函数。平均功率的概率密度函数的形状非常复杂,非线性单稳态和非线性双稳态采集器分别具有两个和三个不同的峰。用于单稳态收获机的N = 8 x 10(4)个样本和用于双稳态收获机的N = 6.5 x 10(4)样本的蒙特卡罗模拟用于验证概率密度函数。结论是共轭无味变换方法在不影响准确性的情况下提供了显着的计算优势。此外,使用共轭无味变换方法,我们表明,当存在多维不确定性时,平均功率对参数(励磁频率,励磁幅度等)的依赖性相对于纯粹的确定性趋势绝对不同。例如,单稳态收割机的确定性趋势和不确定性趋势之间的预测功率差异分别达到基准频率,基准加速度和磁隙的最大值的100%,234%和110%。相对于不确定趋势,确定性趋势始终高估了收获的功率。因此,这项工作可能会在评估“最坏情况”下获得的功率方面有应用价值。相对于现有技术在能量收集文献中提出的方法的主要优点是对参数中的多维不确定性的精确和计算有效的适用性。

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