現在この提出コンテンツをフォロー中です。
- フォローしているコンテンツ フィードに更新が表示されます。
- コミュニケーション基本設定に応じて電子メールを受け取ることができます
In this example we illustrate a MATLAB and Simulink workflow on how to train and deploy a machine learning model to a low-power microcontroller on the edge. We demonstrate how to train a shallow neural network for a regression problem, how to generate readable single precision floating point or Fixed-point code and how to deploy to an ARM cortex M microcontroller such as an Arduino Uno.
We use the engine dataset for estimating engine emission levels based on measurements of fuel consumption and speed. This is a regression problem and we use a shallow neural network to model the system.
The download contains the example dataset, the trained model exported as a MATLAB function and an equivalent Simulink model and a detailed article explaining the workflow steps. It also contains all the required scripts to automate some of the tasks.
引用
MathWorks Fixed Point Team (2026). Deploying shallow Neural Networks on low power ARM Cortex M (https://jp.mathworks.com/matlabcentral/fileexchange/67799-deploying-shallow-neural-networks-on-low-power-arm-cortex-m), MATLAB Central File Exchange. に取得済み.
| バージョン | 公開済み | リリース ノート | Action |
|---|---|---|---|
| 1.0.0.1 | Updated the readme.txt |
|
|
| 1.0.0.0 |
|
