最小二乘法matlab多项式拟?- 百度文库

2026/4/27 15:30:42

ʽ

ԽϺãͨűֱҪߡ

ҲڿԸĽĵطԽⷨŻΪһıֱӽдѭ㷨Чʲߡ϶ࡣ

ڶСϷļ鼰Ӧ

2.1 С˷ϵļ

ϳԴ鲿ֱ֣ԭֵļ֤

С˷ԭ飨4㣩181614121086420-212ԭֵֵ34 ͼ2.1.1 С˷ԭ飨4㣩

Fig.2.1.1 Lagrange interpolation nodes of interpolationfor 4

ǼӴԭϸ8ݣõ¡

С˷ϵԭ飨8㣩1614121086420-2-4ԭֵϽ12345678

ͼ2.1.2С˷ԭ飨8㣩

Fig.2.1.2Lagrange interpolation nodes of interpolation(for 8)

ԭĽС˷ܽϺõϳԭɵֵ Ǹһϵɷϱ׼ʽ΢ƫԭֵı飬м顣Ϊʵֱֽԣһ

ĺΪx^2+x+1.

yֵԭֵ1ķΧڲȡ2,4,10,100,1000ԱֵƳͼбȽϣС˷׼ȷԡ

ϵóĸöϵԱ仯 ֵ һֵ ֵ 2.1.1 ϵԱ仯Ĺ

Table 2.1.1 fitting coefficient with the number of sets of independent variables

2 0.8608 1.2407 1.8152 4 0.9912 0.9690 0.9790 10 0.9997 0.9712 1.0280 100 1.0000 0.9990 1.0738 1000 1.0000 1.0000 0.9950 21.81.61.41.210.80.60.40.2024101001000ֵһֵֵ ͼ2.1.3 ϵԱ仯Ĺ

Table 2.1.3 fitting coefficient with the number of sets of independent variables

ܽ᣺ϵĶʽļԭDZڵĹϣнϺõı֡ڵĶʽڼУͨʹԭԱ࣬ϵĽԽԽӽԭԱﵽһϴֵʱ߻ԭ

ڶС˷ϣԭ뵥ƣȡʾ淽ķʽͬڶֻҪıֵʹijĶֵ֮ҳϵ

2.2С˷ϵʵӦ

ѡȡ㷽ۡϵP65ĵ3С⣬ԸĽΪСԭһy=a+b*x^2+c*xľ鹫ʽʹϡ x y

2.2.1 ݱ Table.2.2.1 the data table

֮ǰijϣõ2ϵΪ0.0497ϵΪ0.6882,һϵΪ0.0193.

õͼϵĽڵǺϵýϺá

19 19.0 25 32.3 31 49.0 38 73.3 44 97.8

ͼ2.2.2 Figure.2.2.2 Fitting curve

ԶϷмӦúǷָ÷õϺԭֵǺϵýϺá֤С˷ʵܷӽϴá

LaguerreʽС

3.1㷨

ʽС˷ϣҪıǸıʽʹнϺõĶԣӣܽϺõرƽԭ

㷨֮ǰ£ϵķ䡣ǿԸıģҪűʹࡣʽҲӦ÷űʾעⳣʳ

syms x f; syms l; m=3;

data=[19 25 31 38 44]; y=[19 25 31 38 44]; l(1)=1; for n=2:m

l(n)=exp(x)/factorial(n-1)*diff(x^(n-1)*exp(-x),x,n-1); end


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