77范文网 - 专业文章范例文档资料分享平台

课程描述自动化(2)

来源:网络收集 时间:2019-02-15 下载这篇文档 手机版
说明:文章内容仅供预览,部分内容可能不全,需要完整文档或者需要复制内容,请下载word后使用。下载word有问题请添加微信号:或QQ: 处理(尽可能给您提供完整文档),感谢您的支持与谅解。点击这里给我发消息

8.7 Examples

IX Multivariable differential calculus 9.1 Concepts

9.2 Partial derivative 9.3 Complete differential

9.4 Derivation for compound function 9.5 Derivation for implicit function

9.6 Geometric application for partial derivative

9.7 First order Taylor formula and extreme values for multivariable function 9.8 Directional derivative and gradient 9.9 Examples

X Multivariable integral calculus 10.1 Riemann integral 10.2 Double integral 10.3 Triple integral

10.4 The first type curve integral 10.5 The first type surface integral 10.6 Application of Riemann integral 10.7 Examples

XI The second type curve integral and surface integral, vector field 11.1 Vector field

11.2 The second type curve integral

11.3 Green formula, plane velocity field circular rector and rotation 11.4 Path irrelevant, conservative field 11.5 The second type surface integral 11.6 Gauss formula, flux and divergence

11.7 Stokes’ theorem, circular rector and rotation 11.8 Examples XII Infinite series

12.1 Convergence and divergence of infinite series

12.2 Convergence and divergence criteria of positive series 12.3 Alternating series, absolute convergence

12.4 Convergence and divergence criteria of improper integral and Г function 12.5 Series with function terms, uniform convergence 12.6 Power series

12.7 Power series expansion for functions 12.8 Application of power series 12.9 Fourier series 12.10 Examples

XIII Complex variables functions

13.1 Complex number and complex variable functions 13.2 Analytic function

13.3 Complex function integral

13.4 Complex function series representation

6

13.5 Application of complex functions 13.6 Examples

XIV Differential geometry 14.1 Vector functions

14.2 Introduction to curve theory

14.3 The first fundamental form of curve theory 14.4 The second fundamental form of curve theory 14.5 Geodesic 14.6 Examples

概率论与数理统计

课程编码:04N1120050 总 学 时:48 学 分:3

先修课程:线性代数 授课教师:王勇 教 材:《概率论与数理统计》,王勇主编,高等教育出版社 课程简介:

通过分析简单的随机现象,概率理论提出了统计模式的现象。概率理论也是统计的基本理论。通过本课程的学习,是学生掌握处理随机现象的基本思想方法,掌握概率论和数理统计的基本知识,培养学生运用概率统计方法提高分析和解决实际问题的能力。 评分标准:作业——20% 期中考试——20% 期末考试——60% 教学大纲:

一、随机事件与概率

1.1随机事件

1.2 事件的关系与运算 1.3 样本空间 1.4 古典概率 1.5 几何概率 1.6 统计概率 二、条件概率与独立性

2.1 条件概率 2.2 乘法定理 2.3 全概率公式 2.4 贝叶斯公式 2.5 事件的独立性 2.6 二项概率公式 三、随机变量及其分布

3.1 随机变量的概念

3.2 离散型随机变量:伯努利分布、二项分布、泊松分布和几何分布 3.3 随机变量的分布函数 3.4 连续型随机变量

7

3.5 概率密度、均匀分布和指数分布 3.6 正态分布

四、多维随机变量及其分布

4.1 多维随机变量

4.2 二维离散型随机变量 4.3 二维连续型随机变量 4.4 随机变量的独立性

4.5 二维随机变量函数的分布 4.6 条件分布

五、随机变量的数字特征与极限定理

5.1 数学期望 5.2 方差 5.3 协方差 5.4 大数定律 5.5 中心极限定理 六、数理统计的基本概念

6.1 总体与样本 6.2 直方图

6.3 t分布和F分布 七、参数估计

7.1 点估计 7.2 区间估计 八、假设检验

九、一元正态线性回归

Probability Theory and Mathematical Statistics

Course Code: 04N1120050 Hours: 48 Credits: 3.0

Instructor: Yong Wang

Textbook: Yong Wang, Probability Theory and Mathematical Statistics, Higher Education Press Prerequisite Course: Linear Algebra and Analytic Geometry Course Description:

By analyzing those simple random phenomena, probability theory comes up with the statistical patterns of random phenomena. Probability theory is also the fundamental theory of statistics. In this course the students learn the basic concepts and methods to process the random phenomena and grasp the basic knowledge of Probability Theory & Mathematical Statistics, and therefore improve their ability to analyze and solve problems with probability statistics.

Grading: Homework-----------------------20% Midterm exam-------------------20% Final exam-------------------------60% Syllabus:

I Random event and probability 1.1 Random event

8

1.2 Calculation of events 1.3 Sample space

1.4 Classical probability 1.5 Geometric probability 1.6 Statistic probability

II Conditional probability and independence 2.1 Conditional probability 2.2 Multiplication rule

2.3 Total probability formula 2.4 Bayes formula

2.5 Events’ independence

2.6 Binomial probability formula III Random variable and distribution 3.1 Concepts of random variable

3.2 Discrete type random variable: Bernoulli distribution, binomial distribution, Poisson distribution and geometric distribution

3.3 Random variable distribution function 3.4 Continuous random variable

3.5 Probability density, uniform distribution, and exponential distribution 3.6 Normal distribution

IV Multiple random variables and their distribution 4.1 Multiple random variables

4.2 Bivariate discrete random variable 4.3 Bivariate continuous random variable 4.4 Independence of random variables

4.5 Bivariate random variable function distribution 4.6 Conditional distribution

V Numerical characteristics and limit theorem 5.1 Mathematical expectation 5.2 Variance 5.3 Covariance

5.4 Law of large numbers 5.5 Central-limit theorem VI Mathematical statistics 6.1 Ensemble and sample 6.2 Histogram

6.3 t distribution and F distribution VII Parameter estimation 7.1 Point estimation 7.2 Interval estimation VIII Hypothesis test

IX Simple normal linear regression

数值分析

9

课程编码: CY120010 总 学 时: 64 学 分: 4

先修课程: 高等数学、计算机基础 授课教师: 吴博英 教 材: 课程笔记 课程描述:

数值分析课程研究各种数学问题求解的数值计算方法,讲解如何用计算机解决实际数学问题的方法。学习此课程的目的是掌握基本的数值计算方法。设计求解算法,求出数学问题的近似解。主要内容包括线性方程组的解法(包括直接法和迭代法),插值求职法(拉格朗日插值,牛顿插值,分段低次插值,三次样条插值),函数逼近计算,数值积分与数值微分的近似计算,方程求根的近似解法,以及矩阵特征值与特征向量的计算。

Numerical Analysis

Course Code: CY120010 Hours: 64 Credits: 4

Prerequisite Course: Advanced Mathematics, College Computer Fundamental Instructor: Boying Wu Textbook: Class Note Course Description

Numerical analysis involves the study, development, and analysis of algorithms for obtaining numerical solutions to various mathematical problems. The course introduces students to the algorithms and methods that are commonly needed in scientific computing. The mathematical underpinnings of these methods are emphasized as much as their algorithmic aspects. We believe that students learn and understand numerical methods best by seeing how algorithms are developed from the mathematical theory and then writing and testing computer implementations of them. Some basic contents of this course are linear system solvers, optimization techniques, interpolation and approximation of functions, solving systems of nonlinear equations, eigenvalue problems, least squares, and quadrature; numerical handling of ordinary and partial differential equations.

大学计算机基础OPT2 OPT3 OPT4

课程编码: 08C1032340 总 学 时: 64 学 分: 3.0

先修课程: 高中数学、计算机 授课教师: 聂兰胜

教 材: 《大学计算机》 高等教育出版社,战德臣、孙大烈等编著 课程描述:

本课程是计算机和工程专业的一门基础课,介绍计算机发展历程和基本原理,将使学生掌握计算机的基本应用。

本课程的主要内容包括:Windows操作系统、办公自动化软件、数据库基础应用、Internet基本应用,并学会简单的网页设计与制作、简单编程方法。并以典型算法类问题和典型系统类问题为例,介绍求解的思维、过程和方法,由算法到系统及综合问题的化解与集成。同时,

10

百度搜索“77cn”或“免费范文网”即可找到本站免费阅读全部范文。收藏本站方便下次阅读,免费范文网,提供经典小说综合文库课程描述自动化(2)在线全文阅读。

课程描述自动化(2).doc 将本文的Word文档下载到电脑,方便复制、编辑、收藏和打印 下载失败或者文档不完整,请联系客服人员解决!
本文链接:https://www.77cn.com.cn/wenku/zonghe/470679.html(转载请注明文章来源)
Copyright © 2008-2022 免费范文网 版权所有
声明 :本网站尊重并保护知识产权,根据《信息网络传播权保护条例》,如果我们转载的作品侵犯了您的权利,请在一个月内通知我们,我们会及时删除。
客服QQ: 邮箱:tiandhx2@hotmail.com
苏ICP备16052595号-18
× 注册会员免费下载(下载后可以自由复制和排版)
注册会员下载
全站内容免费自由复制
注册会员下载
全站内容免费自由复制
注:下载文档有可能“只有目录或者内容不全”等情况,请下载之前注意辨别,如果您已付费且无法下载或内容有问题,请联系我们协助你处理。
微信: QQ: