CRACK PC Optimizer Pro 6.1.4.5 [ak]

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Montana Strobl

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Jul 18, 2024, 11:49:49 AM7/18/24
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I am trying to use scipy.optimize.minimize to fit parameters for a multivariate function, however, regardless of how many noise free data points I am providing to the optimizer, the optimizer could not converge to a correct (or close) answer.

CRACK PC Optimizer Pro 6.1.4.5 [ak]


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You are solving least squares problem, but trying to optimize it using a solver that minimizes a scalar function. While it can possibly solve the problem, it does so very inefficiently. It can require much more iterations or can fail to converge at all.

Also, error(x) currently returns array of float32, because an array of float32 is created in project. It should be replaced by float64, otherwise minimization fails to converge, because most of gradients become zeros when 32 bit precision is used.

With these modifications the solver converges to the solution most of the times, but can sometimes fail to do so. It happens because you generate the problem randomly, so in some cases the problem may be degenerate or make no physical sense. Such cases should be investigated on their own.

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Feature papers represent the most advanced research with significant potential for high impact in the field. A Feature Paper should be a substantial original Article that involves several techniques or approaches, provides an outlook for future research directions and describes possible research applications.

Abstract: The Coronavirus herd immunity optimizer (CHIO) is a new human-based optimization algorithm that imitates the herd immunity strategy to eliminate of the COVID-19 disease. In this paper, the coronavirus herd immunity optimizer (CHIO) is modified to tackle a discrete power scheduling problem in a smart home (PSPSH). PSPSH is a combinatorial optimization problem with NP-hard features. It is a highly constrained discrete scheduling problem concerned with assigning the operation time for smart home appliances based on a dynamic pricing scheme(s) and several other constraints. The primary objective when solving PSPSH is to maintain the stability of the power system by reducing the ratio between average and highest power demand (peak-to-average ratio (PAR)) and reducing electricity bill (EB) with considering the comfort level of users (UC). This paper modifies and adapts the CHIO algorithm to deal with such discrete optimization problems, particularly PSPSH. The adaptation and modification include embedding PSPSH problem-specific operators to CHIO operations to meet the discrete search space requirements. PSPSH is modeled as a multi-objective problem considering all objectives, including PAR, EB, and UC. The proposed method is examined using a dataset that contains 36 home appliances and seven consumption scenarios. The main CHIO parameters are tuned to find their best values. These best values are used to evaluate the proposed method by comparing its results with comparative five metaheuristic algorithms. The proposed method shows encouraging results and almost obtains the best results in all consumption scenarios. Keywords: discrete coronavirus herd immunity optimizer; power scheduling problem in smart home; multi-criteria optimisation; smart home; multi-objective optimisation problem

Makhadmeh, Sharif Naser, Mohammed Azmi Al-Betar, Mohammed A. Awadallah, Ammar Kamal Abasi, Zaid Abdi Alkareem Alyasseri, Iyad Abu Doush, Osama Ahmad Alomari, Robertas Damaševičius, Audrius Zajančkauskas, and Mazin Abed Mohammed. 2022. "A Modified Coronavirus Herd Immunity Optimizer for the Power Scheduling Problem" Mathematics 10, no. 3: 315.

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