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to say the least相关的网络例句

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与 to say the least 相关的网络例句 [注:此内容来源于网络,仅供参考]

The moving least squares approximation makes only require least squares approximation with regard to functional value on all nodes. It makes no require for the residual of derivative approximation.

移动最小二乘近似只要求近似函数在各节点处的误差的平方和最小,对近似函数导数的误差没有任何约束。

The first one is integrated by the least squares and the radical basis function interpolation, which is aimed to the slight nonlinear sensors, and under the limited increament of computation, it can make the results more precise. The second is used for serious nonlinearity and based on the moving least squares which converts the approximation generally into locally, and the result of this way is also satisfied.

对于不是特别严重的非线性,采用最小二乘拟合与径向基函数残差插值进行融合重构,可以在增加有限计算量条件下提高数据的近似精度;对于非线性较严重的传感器,为兼顾局部特性,采用移动最小二乘法进行数据重构,它通过全局近似向局部近似的转化,同样使重构结果具有满意的近似精度。

The Least Z-Difference algorithm using Least Trimmed Squares estimator is proposed in this paper.

提出一个使用截尾最小二乘估计的最小高差算法,该算法在迭代过程中通过基于高差直方图的自适应阈值来区分变形区观测量。

The simulation results also find that the Quasi-Aitken weighted least squares estimator has a smaller asymptotic variance than least squares estimator.

研究结果显示机率加权最小平方法与Quasi-Aitken机率加权最小平方法的回归参数估计式皆具有不偏性,其中Quasi-Aitken机率加权最小平方法的回归参数估计式的变异最小。

The simulation results show that probability weighted least squares estimator and Quasi-Aitken weighted least squares estimator are unbiased estimators of regression coefficients.

研究方法系采用Monte Carlo模拟方式模拟比较最小平方法、分层加权最小平方法、机率加权最小平方法及Quasi-Aitken机率加权最小平方法在分层不等机率抽样下的表现。

OD estimation was divided into fixed steps, with every step containing a bi-level programming. The upper-level problem was a generalized least squares estimator, while the lower level problem was a stochastic user equilibrium model. Namely, based on generalized least squares estimator and stochastic user equilibrium, a new estimator of the OD matrix was proposed by target matrix and traffic counts updating.

将OD估计分为固定的步数,每一步都是一个双层规划,上层为广义最小二乘估计,下层为随机用户均衡分配模型,即以广义最小二乘估计和随机用户均衡分配模型为基础,通过更新估计模型中目标矩阵和实测路段上的流量来估计OD矩阵。

The Recursive Least Square based on Lethe gene, Partial Least Square, BP Nerve Network,which are wide applied in process control, are discussed detailedly respectively. The characteristic and their domain applicable fields of each model and their mend models are systematically analysed.

对在过程控制领域广泛应用的渐消记忆递推最小二乘法、偏最小二乘法和BP 神经网络等建模方法进行了详细的讨论,并对每种建模方法及其改进算法的特性、应用范围进行了深入的分析。

There are five important soft sensor models of moisture have been established in this paper: the moisture model of The Recursive Least Square based on Lethe gene, the moisture model of Principal Component Regression , the moisture model of Partial Least Square, the moisture model of BP Nerve Network, the moisture model based on PLS—BP. All of these soft sensor models of moisture are systematically analysed by using Compound Correlative Coefficient. The factors which influence control of moisture are discussed on detail in this paper.

建立了五个重要的水分软测量模型,即渐消记忆递推最小二乘法水分模型;主成分分析法水分模型;偏最小二乘法水分模型;BP 神经网络水分模型;偏最小二乘BP 网络水分模型;对以上水分软测量模型用统一的评价指标复相关系数对它们的优劣进行了详细的分析,选出最适合水分建模的建模方法,同时对影响水分的各个因素进行了深入的分析和探讨。

Pubescens community and mixed plant species belonged to 56 families, 85 genera, 122 species. The layers of arbors, shrubs, liane, and herbages could be distinguished clearly. The community of Jiulian Mountain Nature Reserve in Jiangxi Province had the highest diversity indices of tree layer in four T. ciliata var. pubescens forest communities, the least was community in Changgang, Longquan of Zhejiang Province. The community of Changgang had the highest index evenness, the least was in Jiulong Mountain of Zhejiang Province. The importance value of T. ciliata var.

研究结果表明:毛红椿天然林群落的物种多样性丰富,与毛红椿混生的植物种类有56科85属122种,而且层次性较强,分为乔木层、灌木层、藤本层和草本层4层。4个毛红椿天然林群落乔木层中,江西九连山群落Simpson多样性指数最高,浙江龙泉昌岗毛红椿群落为最低;浙江龙泉昌岗群落的均匀度指数最高,浙江九龙山群落为最低。

Title slide Overview slide Main slides Conclusion slides References slide Title 10-12 words long Include 3 topical phrases Your name Date assignment is due Put your main points ONLY -Does not include title, overview, conclusion -All main points should be slides later 2-9 bullets -3 main point slides=3bullets Meaningful titles At least one slide for each bullet of overview Suggestions:-4 by 4: four bullets, four words long -At least 2 bullets; no more than 5 -10-25 words on a slide -No bullet should split a line Wrap up with your most important points Recommendations ok 3-4 bullets Not the same as your overview Only list web page and published sources Essential information -Author -Title of work -Date of publication -From the web, put Date of retrieval URL 10-12 words in title (3 class topics) On overview, list main point only No multi-line bullets Wrap up everything at the end -What do you want audience to remember?

名称滑 概观滑主要部份滑动结论滑动叁考滑名称 10-12个字渴望包括 3个谈论的片语你的名字日期任务是应得的东西放你的主要观点唯一的-不包括名称、概观,结论-所有的主要点应该是滑比较迟的 2-9个子弹-3 主要的点滑=3个子弹意义深长的名称至少,为概观的每个子弹滑动提议:-44:四个子弹,四个字渴望-至少 2个子弹;不超过 5 在滑上的-10-25个字-子弹不应该分离一条线以你最重要的观点穿得暖和忠告 ok 3-4个子弹不相同于你的概观只有目录网页而且公开了来源必要的数据-作家-工作的名称-出版的日期-从网,被放取回的日期网址在名称中的 10-12个字(3个班级主题)在概观上,目录主要部份点唯一的没有多线子弹在最后穿得暖和每件事物-你想要听众记得什么?

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推荐网络例句

Nowadays, most of research are to build a transmutative Petri Nets through adding controlling place sets, controlling arc sets and controlling policy to the basic Petri Nets, while the Controlled Petri Nets could be used to argue many controlling theory problems conveniently and to induce many logically and physically supervisory and solve the Event Feedback Controlling Problems and State Feedback Controlling Problem in DEDS supervisory theory.

目前大多数的研究表现为在变形后的受控Petri网基础上,利用各种方法求得各种逻辑型、结构型控制器,解决DEDS监控理论中的事件反馈控制问题与状态反馈控制问题。

On one hand, there are discussions with the works council and union about extension of short time working up to the end of September.

一方面,有讨论,工程理事会和联盟关于延长工作时间短至9月底。

What is the topic sentence of this article?

这篇文章中心的句子是那一句?