Computing Method about the Optimal Spontaneous Fission Quantity of Agent during Ultra High Frequency High-Dimensional Linear Computing

A method to improve the ultra high frequency high-dimensional linear computing power is explored in this paper. A description is given on the process that agent simulates the differentiation and resistance of leukocyte and that the optimal quantity of spontaneous fission is determined. First, the time scalage is calculated to screen and classify important indicators of UCP, based on which the standard host environment is established. Second, the environmental detector of logic structure design of microvillus is simulated, the computing method to determine the optimal quantity of spontaneous fission of agent under different conditions is discussed. Third, to precisely describe the linear computing power of the host environment, an evaluation method based on transcendental number precision calculation is proposed, besides, the adaptability of different measure formulas for objective function is discussed in this paper. Finally, weak exclusion force inside Structure of Quasi-Nanometer Crystal is computed to verify the effectiveness of the method.

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