月間93,089名の
製造業ご担当者様が閲覧しています*

*2025年6月30日現在のGoogle Analyticsのデータより

投稿日:2025年7月6日

A practical guide to learning control modeling basics and system identification model verification technology through demonstrations

Introduction to Control Modeling Basics

When we discuss control modeling, we’re essentially talking about mathematical techniques that help describe how systems behave.
It’s the foundation of understanding how different inputs can affect the outputs of a system.
Whether we’re dealing with mechanical, electrical, or even biological systems, control modeling plays a pivotal role in predicting system behavior and ensuring stability.
This guide will introduce you to the basics of control modeling and help you see the significance of mastering this important concept.

Understanding Control Systems

Control systems are sets of devices that manage, command, direct or regulate the behavior of other devices or systems using control loops.
These systems can be found everywhere, from thermostats in HVAC systems to cruise control in cars.
The goal of a control system is to achieve the desired outcome or response while minimizing errors and disturbances.
To predict and optimize these outcomes, we employ control modeling techniques.

System Identification and Its Importance

System identification is the process of building mathematical models of dynamic systems from measured data.
It’s an essential step in control modeling because it provides the empirical data needed to draft accurate models.
Without proper system identification, the predictive power of your model could be compromised.
The process involves designing experiments, collecting and processing data, selecting the model structure, and executing parameter estimation.
A well-developed identification model becomes a reliable tool for simulating and controlling real-world systems.

Steps in System Identification

Let’s break down the system identification process into manageable steps to gain a better understanding:

1. **Defining Objectives**: Clearly outline what you want to achieve with your control system.
Consider the system’s expected performance and the type of response required.

2. **Experiment Design**: Design experiments that will yield the necessary data for model building.
Ensure the conditions play out like real-world scenarios, which will help create more accurate models.

3. **Data Collection**: Gather high-quality input-output data from the system while the experiment is running.
This data forms the basis of the model you will create.

4. **Model Structure Selection**: Choose the appropriate model structure.
This step might involve choosing between black-box models, grey-box models, or other structures depending on system characteristics.

5. **Parameter Estimation**: Use statistical techniques or algorithms to estimate the parameters of your chosen model.
Efficient estimation leads to a model that accurately reflects the system.

6. **Validation and Testing**: Validate the model by comparing the simulated output from the model to measured data.
Ensure it consistently predicts system behavior accurately.

Model Verification Techniques

Once a model is created, it’s critical to verify its accuracy and effectiveness.
Model verification ensures that the created model is a reliable representation of the system and can be used confidently for further analysis or design.

Verification Methods

Here are some common methods used for verifying models in system identification:

– **Simulation**: Simulate the model using different inputs and compare the results with real system behavior.
This helps to ensure that the model reflects reality accurately.

– **Consistency Check**: Check the model for consistency by observing if it adheres to known physical laws and reasons expected from the system.

– **Residual Analysis**: Analyze residuals, which are the differences between the observed outputs and the model’s outputs.
A systematic pattern in residuals might indicate a deficiency in the model.

– **Cross-Validation**: Split your data into two sets – one for training the model and the other for testing.
This technique helps in determining the model’s predictive performance on data it hasn’t encountered.

Practical Demonstrations and Applications

Learning the concepts of control modeling and system identification isn’t complete without practical demonstrations.
Let’s consider some practical ways you can learn and apply these techniques:

Laboratory Experiments

Conducting lab experiments on simple systems, like an inverted pendulum or a heat exchange system, can provide practical insights into control modeling.
These systems are ideal because they are simple enough to understand yet complex enough to demonstrate the capabilities of modeling and control.

Simulation Software

Using simulation software like Matlab or Simulink can deepen your understanding of control models.
These platforms provide tools to visualize system behaviors, apply control strategies, and validate models effectively.

Real-World Applications

Consider applying what you’ve learned to real-world scenarios.
For instance, optimizing energy use in smart homes or enhancing automated manufacturing processes showcases the real impact of mastering control modeling basics.

Conclusion

Mastering the basics of control modeling and system identification is crucial for anyone looking to engage in complex systems analysis and control.
By understanding how to identify systems accurately and verify models effectively, you set the stage for creating reliable and efficient control solutions.
With structured learning and practical application, the principles laid out in this guide will provide a solid foundation for advanced study or professional practice in control engineering.

資料ダウンロード

QCD管理受発注クラウド「newji」は、受発注部門で必要なQCD管理全てを備えた、現場特化型兼クラウド型の今世紀最高の受発注管理システムとなります。

ユーザー登録

受発注業務の効率化だけでなく、システムを導入することで、コスト削減や製品・資材のステータス可視化のほか、属人化していた受発注情報の共有化による内部不正防止や統制にも役立ちます。

NEWJI DX

製造業に特化したデジタルトランスフォーメーション(DX)の実現を目指す請負開発型のコンサルティングサービスです。AI、iPaaS、および先端の技術を駆使して、製造プロセスの効率化、業務効率化、チームワーク強化、コスト削減、品質向上を実現します。このサービスは、製造業の課題を深く理解し、それに対する最適なデジタルソリューションを提供することで、企業が持続的な成長とイノベーションを達成できるようサポートします。

製造業ニュース解説

製造業、主に購買・調達部門にお勤めの方々に向けた情報を配信しております。
新任の方やベテランの方、管理職を対象とした幅広いコンテンツをご用意しております。

お問い合わせ

コストダウンが利益に直結する術だと理解していても、なかなか前に進めることができない状況。そんな時は、newjiのコストダウン自動化機能で大きく利益貢献しよう!
(β版非公開)

You cannot copy content of this page