湿气用什么药最好最快| 心律不齐什么症状| 脖子上长痘痘什么原因| 目敢念什么| hg是什么单位| 天蝎座是什么星座| 嗜睡是什么原因| 咳嗽能吃什么水果| 吃什么对胰腺有好处| 机智如你是什么意思| 都有什么快递| 副镇长是什么级别| 歌字五行属什么| 尖货是什么意思| 女性睾酮高意味着什么| 碱中毒是什么引起的| 反酸是什么感觉| 阴囊两侧瘙痒是什么原因| 上海话娘娘是什么意思| 感冒吃什么食物好| 高兴的什么| 什么样的智齿需要拔| 宝宝为什么喜欢趴着睡| 口臭挂什么科| 血糖高有什么影响| 进口二甲双胍叫什么| 蜈蚣是什么样的| 红细胞偏低是什么原因| 怀孕有褐色分泌物是什么原因| 眼底出血用什么眼药水最好| 刚生完孩子的产妇吃什么水果好| 四十属什么| 冬虫夏草有什么用| 猪蹄和什么一起炖好吃| 小老头是什么意思| 缠足是什么时候开始的| 什么东西能戒酒| 官星是什么意思| 沙茶酱什么味道| 什么危不什么| 入珠是什么| 测血糖挂号挂什么科| s档是什么档| 晚上8点到9点是什么时辰| 锚什么意思| 黄精有什么功效| 尿黄是什么原因引起的男性| 什么叫台风| 人越来越瘦是什么原因| 一望无际是什么意思| 眼睛飞蚊症用什么药能治好| 眼皮为什么会跳| 昙花什么时候开花| 痛风有什么不能吃| 结婚13年是什么婚| 分散片是什么意思| 打完耳洞不能吃什么| 兆以上的计数单位是什么| 蒟蒻是什么意思| 孕激素六项检查什么时候做| 耀武扬威的意思是什么| 什么减肥最快不反弹| 七情六欲指什么| hbo什么意思| 一什么枣| 理发师代表什么生肖| 生肖猴和什么生肖相冲| 钾低是什么原因造成的| 小苏打是什么成分| 什么穿针大眼瞪小眼| 杂合变异是什么意思| 没有了晨勃是什么原因| 阳气最强的树是什么树| 坐疮是什么样的图片| 甲减对胎儿有什么影响| 血管检查是做什么检查| 11月14日什么星座| 勋章是什么意思| 堃怎么读什么意思| 蓝莓什么时候吃最好| 龙虎山是什么地貌| 2050年是什么年| 小腿酸软无力是什么原因| 耳垂后面疼是什么原因| 什么叫间质性肺病| alb医学上是什么意思| cindy是什么意思| 下体瘙痒是什么原因| pd是什么病| 头晕是什么原因| 返流性食管炎用什么药| 汗臭和狐臭有什么区别怎么辨别| 什么食物含蛋白高| 多头是什么意思| 喝什么茶减肥最有效| 头发为什么会白| 一月25号是什么星座| 心理疾病吃什么药| 一字千金是什么生肖| 申字五行属什么| 84属什么生肖| 逼格什么意思| 为什么插几下就射了| 自闭症是什么原因引起| 男龙和什么生肖最配| 为什么清真不吃猪肉| 穷字代表什么生肖| 中医把脉能看出什么| 学分是什么意思| 办理护照需要什么| 筛窦炎吃什么药| 卤蛋是什么意思| 三元及第是什么意思| 2026年是什么生肖年| 肛门不舒服是什么原因| 三油甘脂是什么| 下海什么意思| 尿ph值高是什么意思| 狐臭看什么科| 左肩膀疼是什么原因| 三眼花翎是什么意思| 摧枯拉朽什么意思| 知了什么时候叫| 水痘用什么药| 皮肤科属于什么科室| 排骨炖苦瓜有什么功效| 王景读什么| bpc是什么意思| 焦虑会引起什么症状| 父母宫代表什么| 耳石症是什么原因| 62岁属什么生肖| 阄是什么意思| 为什么北方人比南方人高| 续航什么意思| 什么越来越什么什么越来越什么| 1924年属什么生肖| 林子祥属什么生肖| 很棒是什么意思| cd代表什么意思| 辩证什么意思| 主动脉钙化什么意思| 粉碎性骨折是什么意思| 什么叫微创手术| 指压是什么意思| 什么是穴位| 丝状疣是什么样子图片| 黄加红是什么颜色| 怀孕做糖耐是检查什么| 什么叫血糖| 什么中生什么| 吃什么补记忆力最快| 心电图j点抬高什么意思| 小孩检查微量元素挂什么科| 喉咙上火吃什么药| 量是什么意思| 足石念什么| 为什么要做包皮手术| 月经颜色发黑是什么原因| 性格好的女生是什么样| 梦见蛇和鱼是什么意思周公解梦| 暮春是什么时候| 经常困想睡觉是什么问题| 复方北豆根氨酚那敏片是什么药| 头疼想吐吃什么药| 阎王叫什么| 吡唑醚菌酯治什么病| 1991年五行属什么| 布洛芬的副作用是什么| 小孩睡觉流鼻血是什么原因引起的| 为人是什么意思| 牙龈发黑是什么原因| 慢性非萎缩性胃炎吃什么药效果好| 国画是什么| 沐沐是什么意思| KTV服务员主要做什么| 女性肝囊肿要注意什么| 茵陈和什么泡水喝对肝脏最好| nba是什么意思的缩写| 舌头痒痒的是什么原因| 白带黄绿是什么原因| 千里江陵是什么意思| 刘备的马叫什么| 什么是借读生| 917是什么星座| aoerbo是什么牌子的手表| 什么是996| 女生的隐私部位长什么样| 自闭症是什么意思| 白带什么颜色| 内裤发黄是什么原因| alpha是什么意思| 四肢麻木是什么原因引起的| 自强不息的息是什么意思| 盛世美颜是什么意思| 两个a是什么牌子| 什么颜色不显黑| 蛊惑什么意思| 口粮是什么意思| 为什么会得脑血栓| 父母有刑是什么意思| 贫血的人适合喝什么茶| 北上广是什么意思| 富士山什么时候喷发| 男生为什么喜欢女生叫爸爸| 没有奶水怎么办吃什么能下奶| 什么是提肛运动| 世界上最长的蛇是什么| 贫血吃什么药补血最快| 头一直摇晃是什么病| 为什么来姨妈左侧输卵管会痛| 鼠是什么命| 查结核做什么检查| 为什么大便不成形| 血压高有什么好办法| 肌腱炎有什么症状| sma是什么| eva鞋底是什么材质| pb是什么意思| 荷花的花语是什么| 哺乳期抽烟对宝宝有什么影响| 三尖瓣轻度反流是什么意思| 甲状腺不均质改变是什么意思| 三七甘一是什么意思| 什么鱼好养| 凝血酶时间是什么意思| 黄花菜长什么样子| 神经性皮炎用什么药最好| 蜜蜂的天敌是什么| 胸闷是什么症状| 头疼吃什么药效果好| 照烧是什么意思| 熬夜喝什么好| 左眼角有痣代表什么| 尿液检查能查出什么病| 人均可支配收入是什么意思| 口苦口干吃什么药最好| 小螳螂吃什么| 香鱼又叫什么鱼| 团长转业到地方是什么职务| 子母环是什么形状图片| 偶发室性早搏是什么意思| 痛风可以吃什么食物表| 耳朵堵塞感是什么原因| 手指甲软薄是缺什么| 蒲公英是什么样子| 什么最重要| 吃槐花有什么好处| 阴道炎用什么药最好| 骨蒸是什么意思| 人参果是什么季节的| 私房照是什么| 鹦鹉爱吃什么| m2是什么意思啊| 靛青色是什么颜色| 鲸鱼属于什么类动物| 打假是什么意思| 723是什么意思| 春天有什么特点| nk是什么意思| 孔子是什么圣人| 脚烧热是什么原因| 孕囊形态欠规则是什么意思| 什么叫牙周炎| 百度

中国电磁炮技术已获关键性突破 发射间隔仅需45秒

百度 2016年荣获广西五一劳动奖章。

Numerical analysis is the study of algorithms that use numerical approximation (as opposed to symbolic manipulations) for the problems of mathematical analysis (as distinguished from discrete mathematics). It is the study of numerical methods that attempt to find approximate solutions of problems rather than the exact ones. Numerical analysis finds application in all fields of engineering and the physical sciences, and in the 21st century also the life and social sciences like economics, medicine, business and even the arts. Current growth in computing power has enabled the use of more complex numerical analysis, providing detailed and realistic mathematical models in science and engineering. Examples of numerical analysis include: ordinary differential equations as found in celestial mechanics (predicting the motions of planets, stars and galaxies), numerical linear algebra in data analysis,[2][3][4] and stochastic differential equations and Markov chains for simulating living cells in medicine and biology.

Babylonian clay tablet YBC 7289 (c. 1800–1600 BCE) with annotations. The approximation of the square root of 2 is four sexagesimal figures, which is about six decimal figures. 1 + 24/60 + 51/602 + 10/603 = 1.41421296...[1]

Before modern computers, numerical methods often relied on hand interpolation formulas, using data from large printed tables. Since the mid-20th century, computers calculate the required functions instead, but many of the same formulas continue to be used in software algorithms.[5]

The numerical point of view goes back to the earliest mathematical writings. A tablet from the Yale Babylonian Collection (YBC 7289), gives a sexagesimal numerical approximation of the square root of 2, the length of the diagonal in a unit square.

Numerical analysis continues this long tradition: rather than giving exact symbolic answers translated into digits and applicable only to real-world measurements, approximate solutions within specified error bounds are used.

Applications

edit

The overall goal of the field of numerical analysis is the design and analysis of techniques to give approximate but accurate solutions to a wide variety of hard problems, many of which are infeasible to solve symbolically:

  • Advanced numerical methods are essential in making numerical weather prediction feasible.
  • Computing the trajectory of a spacecraft requires the accurate numerical solution of a system of ordinary differential equations.
  • Car companies can improve the crash safety of their vehicles by using computer simulations of car crashes. Such simulations essentially consist of solving partial differential equations numerically.
  • In the financial field, (private investment funds) and other financial institutions use quantitative finance tools from numerical analysis to attempt to calculate the value of stocks and derivatives more precisely than other market participants.[6]
  • Airlines use sophisticated optimization algorithms to decide ticket prices, airplane and crew assignments and fuel needs. Historically, such algorithms were developed within the overlapping field of operations research.
  • Insurance companies use numerical programs for actuarial analysis.

History

edit

The field of numerical analysis predates the invention of modern computers by many centuries. Linear interpolation was already in use more than 2000 years ago. Many great mathematicians of the past were preoccupied by numerical analysis,[5] as is obvious from the names of important algorithms like Newton's method, Lagrange interpolation polynomial, Gaussian elimination, or Euler's method. The origins of modern numerical analysis are often linked to a 1947 paper by John von Neumann and Herman Goldstine,[7][8] but others consider modern numerical analysis to go back to work by E. T. Whittaker in 1912.[7]

 
NIST publication

To facilitate computations by hand, large books were produced with formulas and tables of data such as interpolation points and function coefficients. Using these tables, often calculated out to 16 decimal places or more for some functions, one could look up values to plug into the formulas given and achieve very good numerical estimates of some functions. The canonical work in the field is the NIST publication edited by Abramowitz and Stegun, a 1000-plus page book of a very large number of commonly used formulas and functions and their values at many points. The function values are no longer very useful when a computer is available, but the large listing of formulas can still be very handy.

The mechanical calculator was also developed as a tool for hand computation. These calculators evolved into electronic computers in the 1940s, and it was then found that these computers were also useful for administrative purposes. But the invention of the computer also influenced the field of numerical analysis,[5] since now longer and more complicated calculations could be done.

The Leslie Fox Prize for Numerical Analysis was initiated in 1985 by the Institute of Mathematics and its Applications.

Key concepts

edit

Direct and iterative methods

edit

Direct methods compute the solution to a problem in a finite number of steps. These methods would give the precise answer if they were performed in infinite precision arithmetic. Examples include Gaussian elimination, the QR factorization method for solving systems of linear equations, and the simplex method of linear programming. In practice, finite precision is used and the result is an approximation of the true solution (assuming stability).

In contrast to direct methods, iterative methods are not expected to terminate in a finite number of steps, even if infinite precision were possible. Starting from an initial guess, iterative methods form successive approximations that converge to the exact solution only in the limit. A convergence test, often involving the residual, is specified in order to decide when a sufficiently accurate solution has (hopefully) been found. Even using infinite precision arithmetic these methods would not reach the solution within a finite number of steps (in general). Examples include Newton's method, the bisection method, and Jacobi iteration. In computational matrix algebra, iterative methods are generally needed for large problems.[9][10][11][12]

Iterative methods are more common than direct methods in numerical analysis. Some methods are direct in principle but are usually used as though they were not, e.g. GMRES and the conjugate gradient method. For these methods the number of steps needed to obtain the exact solution is so large that an approximation is accepted in the same manner as for an iterative method.

As an example, consider the problem of solving

3x3 + 4 = 28

for the unknown quantity x.

Direct method
3x3 + 4 = 28.
Subtract 4 3x3 = 24.
Divide by 3 x3 =  8.
Take cube roots x =  2.

For the iterative method, apply the bisection method to f(x) = 3x3 ? 24. The initial values are a = 0, b = 3, f(a) = ?24, f(b) = 57.

Iterative method
a b mid f(mid)
0 3 1.5 ?13.875
1.5 3 2.25 10.17...
1.5 2.25 1.875 ?4.22...
1.875 2.25 2.0625 2.32...

From this table it can be concluded that the solution is between 1.875 and 2.0625. The algorithm might return any number in that range with an error less than 0.2.

Conditioning

edit

Ill-conditioned problem: Take the function f(x) = 1/(x ? 1). Note that f(1.1) = 10 and f(1.001) = 1000: a change in x of less than 0.1 turns into a change in f(x) of nearly 1000. Evaluating f(x) near x = 1 is an ill-conditioned problem.

Well-conditioned problem: By contrast, evaluating the same function f(x) = 1/(x ? 1) near x = 10 is a well-conditioned problem. For instance, f(10) = 1/9 ≈ 0.111 and f(11) = 0.1: a modest change in x leads to a modest change in f(x).

Discretization

edit

Furthermore, continuous problems must sometimes be replaced by a discrete problem whose solution is known to approximate that of the continuous problem; this process is called 'discretization'. For example, the solution of a differential equation is a function. This function must be represented by a finite amount of data, for instance by its value at a finite number of points at its domain, even though this domain is a continuum.

Generation and propagation of errors

edit

The study of errors forms an important part of numerical analysis. There are several ways in which error can be introduced in the solution of the problem.

Round-off

edit

Round-off errors arise because it is impossible to represent all real numbers exactly on a machine with finite memory (which is what all practical digital computers are).

Truncation and discretization error

edit

Truncation errors are committed when an iterative method is terminated or a mathematical procedure is approximated and the approximate solution differs from the exact solution. Similarly, discretization induces a discretization error because the solution of the discrete problem does not coincide with the solution of the continuous problem. In the example above to compute the solution of  , after ten iterations, the calculated root is roughly 1.99. Therefore, the truncation error is roughly 0.01.

Once an error is generated, it propagates through the calculation. For example, the operation + on a computer is inexact. A calculation of the type ? ? is even more inexact.

A truncation error is created when a mathematical procedure is approximated. To integrate a function exactly, an infinite sum of regions must be found, but numerically only a finite sum of regions can be found, and hence the approximation of the exact solution. Similarly, to differentiate a function, the differential element approaches zero, but numerically only a nonzero value of the differential element can be chosen.

Numerical stability and well-posed problems

edit

An algorithm is called numerically stable if an error, whatever its cause, does not grow to be much larger during the calculation.[13] This happens if the problem is well-conditioned, meaning that the solution changes by only a small amount if the problem data are changed by a small amount.[13] To the contrary, if a problem is 'ill-conditioned', then any small error in the data will grow to be a large error.[13] Both the original problem and the algorithm used to solve that problem can be well-conditioned or ill-conditioned, and any combination is possible. So an algorithm that solves a well-conditioned problem may be either numerically stable or numerically unstable. An art of numerical analysis is to find a stable algorithm for solving a well-posed mathematical problem.

Areas of study

edit

The field of numerical analysis includes many sub-disciplines. Some of the major ones are:

Computing values of functions

edit

Interpolation: Observing that the temperature varies from 20 degrees Celsius at 1:00 to 14 degrees at 3:00, a linear interpolation of this data would conclude that it was 17 degrees at 2:00 and 18.5 degrees at 1:30pm.

Extrapolation: If the gross domestic product of a country has been growing an average of 5% per year and was 100 billion last year, it might be extrapolated that it will be 105 billion this year.

 
A line through 20 points

Regression: In linear regression, given n points, a line is computed that passes as close as possible to those n points.

 
How much for a glass of lemonade?

Optimization: Suppose lemonade is sold at a lemonade stand, at $1.00 per glass, that 197 glasses of lemonade can be sold per day, and that for each increase of $0.01, one less glass of lemonade will be sold per day. If $1.485 could be charged, profit would be maximized, but due to the constraint of having to charge a whole-cent amount, charging $1.48 or $1.49 per glass will both yield the maximum income of $220.52 per day.

 
Wind direction in blue, true trajectory in black, Euler method in red

Differential equation: If 100 fans are set up to blow air from one end of the room to the other and then a feather is dropped into the wind, what happens? The feather will follow the air currents, which may be very complex. One approximation is to measure the speed at which the air is blowing near the feather every second, and advance the simulated feather as if it were moving in a straight line at that same speed for one second, before measuring the wind speed again. This is called the Euler method for solving an ordinary differential equation.

One of the simplest problems is the evaluation of a function at a given point. The most straightforward approach, of just plugging in the number in the formula is sometimes not very efficient. For polynomials, a better approach is using the Horner scheme, since it reduces the necessary number of multiplications and additions. Generally, it is important to estimate and control round-off errors arising from the use of floating-point arithmetic.

Interpolation, extrapolation, and regression

edit

Interpolation solves the following problem: given the value of some unknown function at a number of points, what value does that function have at some other point between the given points?

Extrapolation is very similar to interpolation, except that now the value of the unknown function at a point which is outside the given points must be found.[14]

Regression is also similar, but it takes into account that the data are imprecise. Given some points, and a measurement of the value of some function at these points (with an error), the unknown function can be found. The least squares-method is one way to achieve this.

Solving equations and systems of equations

edit

Another fundamental problem is computing the solution of some given equation. Two cases are commonly distinguished, depending on whether the equation is linear or not. For instance, the equation   is linear while   is not.

Much effort has been put in the development of methods for solving systems of linear equations. Standard direct methods, i.e., methods that use some matrix decomposition are Gaussian elimination, LU decomposition, Cholesky decomposition for symmetric (or hermitian) and positive-definite matrix, and QR decomposition for non-square matrices. Iterative methods such as the Jacobi method, Gauss–Seidel method, successive over-relaxation and conjugate gradient method[15] are usually preferred for large systems. General iterative methods can be developed using a matrix splitting.

Root-finding algorithms are used to solve nonlinear equations (they are so named since a root of a function is an argument for which the function yields zero). If the function is differentiable and the derivative is known, then Newton's method is a popular choice.[16][17] Linearization is another technique for solving nonlinear equations.

Solving eigenvalue or singular value problems

edit

Several important problems can be phrased in terms of eigenvalue decompositions or singular value decompositions. For instance, the spectral image compression algorithm[18] is based on the singular value decomposition. The corresponding tool in statistics is called principal component analysis.

Optimization

edit

Optimization problems ask for the point at which a given function is maximized (or minimized). Often, the point also has to satisfy some constraints.

The field of optimization is further split in several subfields, depending on the form of the objective function and the constraint. For instance, linear programming deals with the case that both the objective function and the constraints are linear. A famous method in linear programming is the simplex method.

The method of Lagrange multipliers can be used to reduce optimization problems with constraints to unconstrained optimization problems.

Evaluating integrals

edit

Numerical integration, in some instances also known as numerical quadrature, asks for the value of a definite integral.[19] Popular methods use one of the Newton–Cotes formulas (like the midpoint rule or Simpson's rule) or Gaussian quadrature.[20] These methods rely on a "divide and conquer" strategy, whereby an integral on a relatively large set is broken down into integrals on smaller sets. In higher dimensions, where these methods become prohibitively expensive in terms of computational effort, one may use Monte Carlo or quasi-Monte Carlo methods (see Monte Carlo integration[21]), or, in modestly large dimensions, the method of sparse grids.

Differential equations

edit

Numerical analysis is also concerned with computing (in an approximate way) the solution of differential equations, both ordinary differential equations and partial differential equations.[22]

Partial differential equations are solved by first discretizing the equation, bringing it into a finite-dimensional subspace.[23] This can be done by a finite element method,[24][25][26] a finite difference method,[27] or (particularly in engineering) a finite volume method.[28] The theoretical justification of these methods often involves theorems from functional analysis. This reduces the problem to the solution of an algebraic equation.

Software

edit

Since the late twentieth century, most algorithms are implemented in a variety of programming languages. The Netlib repository contains various collections of software routines for numerical problems, mostly in Fortran and C. Commercial products implementing many different numerical algorithms include the IMSL and NAG libraries; a free-software alternative is the GNU Scientific Library.

Over the years the Royal Statistical Society published numerous algorithms in its Applied Statistics (code for these "AS" functions is here); ACM similarly, in its Transactions on Mathematical Software ("TOMS" code is here). The Naval Surface Warfare Center several times published its Library of Mathematics Subroutines (code here).

There are several popular numerical computing applications such as MATLAB,[29][30][31] TK Solver, S-PLUS, and IDL[32] as well as free and open-source alternatives such as FreeMat, Scilab,[33][34] GNU Octave (similar to Matlab), and IT++ (a C++ library). There are also programming languages such as R[35] (similar to S-PLUS), Julia,[36] and Python with libraries such as NumPy, SciPy[37][38][39] and SymPy. Performance varies widely: while vector and matrix operations are usually fast, scalar loops may vary in speed by more than an order of magnitude.[40][41]

Many computer algebra systems such as Mathematica also benefit from the availability of arbitrary-precision arithmetic which can provide more accurate results.[42][43][44][45]

Also, any spreadsheet software can be used to solve simple problems relating to numerical analysis. Excel, for example, has hundreds of available functions, including for matrices, which may be used in conjunction with its built in "solver".

See also

edit

Notes

edit

References

edit

Citations

edit
  1. ^ "Photograph, illustration, and description of the root(2) tablet from the Yale Babylonian Collection". Archived from the original on 13 August 2012. Retrieved 2 October 2006.
  2. ^ Demmel, J.W. (1997). Applied numerical linear algebra. SIAM. doi:10.1137/1.9781611971446. ISBN 978-1-61197-144-6.
  3. ^ Ciarlet, P.G.; Miara, B.; Thomas, J.M. (1989). Introduction to numerical linear algebra and optimization. Cambridge University Press. ISBN 9780521327886. OCLC 877155729.
  4. ^ Trefethen, Lloyd; Bau III, David (1997). Numerical Linear Algebra. SIAM. ISBN 978-0-89871-361-9.
  5. ^ a b c Brezinski, C.; Wuytack, L. (2012). Numerical analysis: Historical developments in the 20th century. Elsevier. ISBN 978-0-444-59858-5.
  6. ^ Stephen Blyth. "An Introduction to Quantitative Finance". 2013. page VII.
  7. ^ a b Watson, G.A. (2010). "The history and development of numerical analysis in Scotland: a personal perspective" (PDF). The Birth of Numerical Analysis. World Scientific. pp. 161–177. ISBN 9789814469456.
  8. ^ Bultheel, Adhemar; Cools, Ronald, eds. (2010). The Birth of Numerical Analysis. Vol. 10. World Scientific. ISBN 978-981-283-625-0.
  9. ^ Saad, Y. (2003). Iterative methods for sparse linear systems. SIAM. ISBN 978-0-89871-534-7.
  10. ^ Hageman, L.A.; Young, D.M. (2012). Applied iterative methods (2nd ed.). Courier Corporation. ISBN 978-0-8284-0312-2.
  11. ^ Traub, J.F. (1982). Iterative methods for the solution of equations (2nd ed.). American Mathematical Society. ISBN 978-0-8284-0312-2.
  12. ^ Greenbaum, A. (1997). Iterative methods for solving linear systems. SIAM. ISBN 978-0-89871-396-1.
  13. ^ a b c Higham 2002
  14. ^ Brezinski, C.; Zaglia, M.R. (2013). Extrapolation methods: theory and practice. Elsevier. ISBN 978-0-08-050622-7.
  15. ^ Hestenes, Magnus R.; Stiefel, Eduard (December 1952). "Methods of Conjugate Gradients for Solving Linear Systems" (PDF). Journal of Research of the National Bureau of Standards. 49 (6): 409–. doi:10.6028/jres.049.044.
  16. ^ Ezquerro Fernández, J.A.; Hernández Verón, M.á. (2017). Newton's method: An updated approach of Kantorovich's theory. Birkh?user. ISBN 978-3-319-55976-6.
  17. ^ Deuflhard, Peter (2006). Newton Methods for Nonlinear Problems. Affine Invariance and Adaptive Algorithms. Computational Mathematics. Vol. 35 (2nd ed.). Springer. ISBN 978-3-540-21099-3.
  18. ^ Ogden, C.J.; Huff, T. (1997). "The Singular Value Decomposition and Its Applications in Image Compression" (PDF). Math 45. College of the Redwoods. Archived from the original (PDF) on 25 September 2006.
  19. ^ Davis, P.J.; Rabinowitz, P. (2007). Methods of numerical integration. Courier Corporation. ISBN 978-0-486-45339-2.
  20. ^ Weisstein, Eric W. "Gaussian Quadrature". MathWorld.
  21. ^ Geweke, John (1996). "15. Monte carlo simulation and numerical integration". Handbook of Computational Economics. Vol. 1. Elsevier. pp. 731–800. doi:10.1016/S1574-0021(96)01017-9. ISBN 9780444898579.
  22. ^ Iserles, A. (2009). A first course in the numerical analysis of differential equations (2nd ed.). Cambridge University Press. ISBN 978-0-521-73490-5.
  23. ^ Ames, W.F. (2014). Numerical methods for partial differential equations (3rd ed.). Academic Press. ISBN 978-0-08-057130-0.
  24. ^ Johnson, C. (2012). Numerical solution of partial differential equations by the finite element method. Courier Corporation. ISBN 978-0-486-46900-3.
  25. ^ Brenner, S.; Scott, R. (2013). The mathematical theory of finite element methods (2nd ed.). Springer. ISBN 978-1-4757-3658-8.
  26. ^ Strang, G.; Fix, G.J. (2018) [1973]. An analysis of the finite element method (2nd ed.). Wellesley-Cambridge Press. ISBN 9780980232783. OCLC 1145780513.
  27. ^ Strikwerda, J.C. (2004). Finite difference schemes and partial differential equations (2nd ed.). SIAM. ISBN 978-0-89871-793-8.
  28. ^ LeVeque, Randall (2002). Finite Volume Methods for Hyperbolic Problems. Cambridge University Press. ISBN 978-1-139-43418-8.
  29. ^ Quarteroni, A.; Saleri, F.; Gervasio, P. (2014). Scientific computing with MATLAB and Octave (4th ed.). Springer. ISBN 978-3-642-45367-0.
  30. ^ Gander, W.; Hrebicek, J., eds. (2011). Solving problems in scientific computing using Maple and Matlab?. Springer. ISBN 978-3-642-18873-2.
  31. ^ Barnes, B.; Fulford, G.R. (2011). Mathematical modelling with case studies: a differential equations approach using Maple and MATLAB (2nd ed.). CRC Press. ISBN 978-1-4200-8350-7. OCLC 1058138488.
  32. ^ Gumley, L.E. (2001). Practical IDL programming. Elsevier. ISBN 978-0-08-051444-4.
  33. ^ Bunks, C.; Chancelier, J.P.; Delebecque, F.; Goursat, M.; Nikoukhah, R.; Steer, S. (2012). Engineering and scientific computing with Scilab. Springer. ISBN 978-1-4612-7204-5.
  34. ^ Thanki, R.M.; Kothari, A.M. (2019). Digital image processing using SCILAB. Springer. ISBN 978-3-319-89533-8.
  35. ^ Ihaka, R.; Gentleman, R. (1996). "R: a language for data analysis and graphics" (PDF). Journal of Computational and Graphical Statistics. 5 (3): 299–314. doi:10.1080/10618600.1996.10474713. S2CID 60206680.
  36. ^ Bezanson, Jeff; Edelman, Alan; Karpinski, Stefan; Shah, Viral B. (1 January 2017). "Julia: A Fresh Approach to Numerical Computing". SIAM Review. 59 (1): 65–98. arXiv:1411.1607. doi:10.1137/141000671. hdl:1721.1/110125. ISSN 0036-1445. S2CID 13026838.
  37. ^ Jones, E., Oliphant, T., & Peterson, P. (2001). SciPy: Open source scientific tools for Python.
  38. ^ Bressert, E. (2012). SciPy and NumPy: an overview for developers. O'Reilly. ISBN 9781306810395.
  39. ^ Blanco-Silva, F.J. (2013). Learning SciPy for numerical and scientific computing. Packt. ISBN 9781782161639.
  40. ^ Speed comparison of various number crunching packages Archived 5 October 2006 at the Wayback Machine
  41. ^ Comparison of mathematical programs for data analysis Archived 18 May 2016 at the Portuguese Web Archive Stefan Steinhaus, ScientificWeb.com
  42. ^ Maeder, R.E. (1997). Programming in mathematica (3rd ed.). Addison-Wesley. ISBN 9780201854497. OCLC 1311056676.
  43. ^ Wolfram, Stephen (1999). The MATHEMATICA? book, version 4. Cambridge University Press. ISBN 9781579550042.
  44. ^ Shaw, W.T.; Tigg, J. (1993). Applied Mathematica: getting started, getting it done (PDF). Addison-Wesley. ISBN 978-0-201-54217-2. OCLC 28149048.
  45. ^ Marasco, A.; Romano, A. (2001). Scientific Computing with Mathematica: Mathematical Problems for Ordinary Differential Equations. Springer. ISBN 978-0-8176-4205-1.

Sources

edit
edit

Journals

edit

Online texts

edit

Online course material

edit
猫咪呕吐吃什么药可以解决 肝占位病变是什么意思 声带息肉有什么危害 扁桃体发炎咳嗽吃什么药效果好 大肝功能是检查什么
大脸适合什么发型 人体缺钾是什么症状 hmo是什么意思 诺氟沙星胶囊治什么病 女性查hpv挂什么科
疱疹在什么情况下传染 中年危机是什么意思 经期头疼吃什么药效果最好 什么竹笋不能吃 产后什么时候来月经正常
耳舌念什么 vc是什么 谷维素是治疗什么的 皮肤黑是什么原因 淋巴细胞计数偏低是什么原因
浅笑安然是什么意思hcv9jop1ns4r.cn 湿疹用什么药最好hcv9jop0ns6r.cn 猫喜欢什么样的人hcv8jop3ns2r.cn 金钱草有什么功效hcv9jop2ns1r.cn 海菜是什么hcv8jop7ns3r.cn
七手八脚是什么意思hcv9jop1ns8r.cn 白浆是什么hcv8jop8ns9r.cn 孩子流口水是什么原因引起的hcv8jop2ns9r.cn 痛风打什么针见效最快shenchushe.com luky是什么意思bfb118.com
平权是什么意思hcv8jop8ns8r.cn 大姑姐最怕弟媳什么hcv9jop7ns2r.cn 妤字属于五行属什么hcv8jop6ns8r.cn 辜负什么意思qingzhougame.com 屈原是什么诗人mmeoe.com
spyder是什么品牌hcv9jop4ns9r.cn 丙氨酸氨基转移酶是什么hcv9jop0ns8r.cn 透明质酸钠是什么东西hcv9jop3ns7r.cn 吃的少还胖什么原因hcv8jop4ns2r.cn 人为什么会中暑hcv9jop7ns9r.cn
百度