From 18eb6dbfa545cdbb69103e312ccb0992d1b20b00 Mon Sep 17 00:00:00 2001 From: Christian Kolset Date: Fri, 12 Sep 2025 17:24:40 -0600 Subject: Worked on module 3 --- tutorials/module_3/4_numerical_integration.md | 61 ++++++++++++++------------- 1 file changed, 32 insertions(+), 29 deletions(-) (limited to 'tutorials/module_3/4_numerical_integration.md') diff --git a/tutorials/module_3/4_numerical_integration.md b/tutorials/module_3/4_numerical_integration.md index c486825..4c7876c 100644 --- a/tutorials/module_3/4_numerical_integration.md +++ b/tutorials/module_3/4_numerical_integration.md @@ -1,15 +1,11 @@ ## Midpoint Method - ## Trapezoidal Method - ## Romberg Integration - ## Gaussian Integration - ## Simpson's Rule ### Simpsons 1/3 @@ -21,9 +17,7 @@ # Numerical Integration ## Why Numerical? -Integration is one of the fundamental tools in engineering analysis. Mechanical engineers frequently encounter integrals when computing work from force–displacement data, determining heat transfer from a time-dependent signal, or calculating lift and drag forces from pressure distributions over an airfoil. While some integrals can be evaluated analytically, most practical problems involve functions that are either too complex or are available only as experimental data. As engineering we choose numerical integration—also known as quadrature—provides a systematic approach to approximate the integral of a function over a finite interval. - -In this tutorial, we will study several standard methods of numerical integration, compare their accuracy, and implement them in Python. By the end, you will understand not only how to apply each method, but also when one method may be more suitable than another. +Integration is one of the fundamental tools in engineering analysis. Mechanical engineers frequently encounter integrals when computing work from force–displacement data, determining heat transfer from a time-dependent signal, or calculating lift and drag forces from pressure distributions over an airfoil. While some integrals can be evaluated analytically, most practical problems involve functions that are either too complex or are available only as experimental data. In engineering, numerical integration provides a systematic approach to approximate the integral of a function over a finite interval. --- @@ -39,8 +33,8 @@ $$ Here, $x_i$ are the chosen evaluation points and $w_i$ are their associated weights. ### Midpoint Rule -The midpoint rule divides the interval into $n$ subintervals of equal width $h = (b-a)/n$ and -evaluates the function at the midpoint of each subinterval: +The midpoint rule divides the interval into $n$ sub-intervals of equal width $h = (b-a)/n$ and +evaluates the function at the midpoint of each sub-interval: $$ I \approx \sum_{i=0}^{n-1} h \, f\!\left(x_i + \tfrac{h}{2}\right). $$ @@ -57,7 +51,7 @@ its accuracy is of order $O(h^2)$. Simpson’s rules use polynomial interpolation to achieve higher accuracy. - **Simpson’s 1/3 Rule (order $O(h^4)$)** - Requires an even number of subintervals $n$: + Requires an even number of sub-intervals $n$: $$ I \approx \frac{h}{3}\Big[f(x_0) + 4\sum_{\text{odd } i} f(x_i) + 2\sum_{\text{even } i