feature rock reinforcement

精品项目网 2024-05-23 02:46:05

基本释义:

随机加固

网络释义

1)feature rock reinforcement,随机加固

2)random screening,随机加网

3)random loading,随机加载

4)random weighting,随机加权

5)random weight,随机加权

6)whighted random,加权随机

用法和例句

As an important technology of RIP,quality of computer screening algorithm has a direct effect on reproduction result,an approach to improvement of reproduction result and algorithm is explored through discussing and experimenting on computer random screening,FM screening and hybrid screening.

作为RIP中的一项重要技术,计算机加网算法的好坏直接影响着印刷复制质量,通过对计算机随机加网、调幅加网及混合加网算法的讨论及实验,探索了为提高复制质量改进算法的途

Effect of the high-load rate RHLand high load occurrenee in random loading and the periodic single peak overloading on FCG isexamined,The results show that the effect of high loads in random loading on FCG is not as great asthat in a single peak overload within constant-amplitude loading.

实验表明:随机加载条件下,高荷载对裂纹扩展的影响远没有单峰过载加载时大;高载比和高载出现频率是影响裂纹扩展的重要因素;在实验随机加载条件下,只有当高截比大于2。

Application of Bayesian method based on random weighting in reliability parameter estimation;

基于随机加权的Bayes方法在可靠性参数估计中的应用

The SPOT method for reliability verification under two parameter weibull distribution is discussed,whereas there is little history data,random weighting simulation is used to estimate the figure parameter of Weibull distribution and the prior test parameter.

研究了二参数Weibull分布下可靠性指标验证的SPOT方法,鉴于少量的历史数据,采用随机加权法对Weibull分布的形状参数和待检验指标的验前超参数进行估计,为Weibull分布的SPOT验证提供了参数值。

Using the random weighting method, its approximating distribution which is more precise than normal approximation is obtained.

研究了一类有渐近展开分布的逼近问题,应用随机加权法给出了比正态逼近精度更高的模拟分布。

Mean ergodic theorems for square sequence with random weights;

随机加权平方序列的平均遍历定理

RESEARCH OF DYNAMIC BAYES ACCURACY ASSESSMENT BASED ON BAYESIAN BOOTSTRAP;

基于随机加权法的动态Bayes精度评估

Edgeworth expansion of random weighting estimation in semi-parametric regression model

半参数回归模型随机加权估计的渐近展开

Random Weighting Bayes Method to Determine the Prior-information Distribution of Rockmass Mechanical Parameters

确定岩体力学参数先验分布的随机加权Bayes方法

PROBABILITY DISTRIBUTION OF SMALL SAMPLES OF GEOTECHNICAL PARAMETERS USING STOCHASTIC WEIGHTED METHOD

随机加权法辅助小样本岩土参数分布拟合

Study of Equipment MTTR on Random Weighted Method

基于随机加权法的装备平均维修时间验证研究

APPROXIMATION TO THE DISTRIBUTION OF M-ESTIMATES IN RANKED-SET SAMPLING BY RANDOMLY WEIGHTED BOOTSTRAP

序集抽样中M估计分布的随机加权逼近

The Edgeworth Expansion for the Random Weighting Estimate of the Sample Variance--Not the Independent Identicaly Distribution Case

方差估计的随机加权分布的渐近展开——非独立同分布情形

The Bootstrap and Random Weighting Method in Assessing Bioequivalence;

自助法及随机加权法在生物等效性评价中的应用

RANDOM WEIGHTING APPROXIMATION OF A CLASS OF ESTIMATORS IN SEMIPARAMETRIC REGRESSION MODEL UNDER FIXED DESIGN;

固定设计下半参数回归模型估计的随机加权逼近

The limit theorems of weighted sums for the sequences of binary random variables;

二值随机变量序列加权和的极限定理

L~r convergence for weighted sums of arrays of Banach space valued elements;

B值随机元阵列加权和的L~r收敛性

Strong Convergence for Jamison Weighted Sums of Independent

B值随机变量Jamison型加权和的强收敛性

Uniform Weighting and Adaptive Fit Technology for Terrain Stochastic Linearization

地形随机线性化的一致加权自适应拟合技术

On the Strong Laws for Arrays of Negatively Dependent Random Variables;

负相依随机变量阵列加权和的强收敛性

L~r CONVERGENCE OF WEIGHTEDSUMS FOR ARRAYS OF ROWWISE NA RANDOM VARIABLES;

行为NA的随机变量阵列加权和的L~r收敛性

Some discussion on the complete convergence for weighted sums of arrays of Banach Valued random elements.;

B值随机元阵列加权和的完全收敛性探讨

Adaptive weighted fusion algorithm for non-stationary random sequence

非平稳随机序列的自适应加权融合算法

Strong Limit Theorems of Weighted Product Sums for Arrays of NOD Random Variables

NOD随机变量阵列加权乘积和的强极限定理

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