Application of Artificial Intelligence in Civil/Environmental Engineering
14 Professional Development Hours
After participating in this course, you will be able to:
- Implement primary AI techniques to address specific challenges in Civil/Environmental Engineering.
- Apply evaluation methodologies effectively to solve engineering problems.
- Utilize AI technologies to analyze and interpret real-world datasets.
- Develop innovative AI-driven solutions for complex environmental scenarios.
- Integrate AI-driven models into existing workflows to enhance efficiency and decision-making.
Description
Artificial Intelligence (AI) and machine learning are poised to transform Civil and Environmental Engineering. Engineers must be equipped with the knowledge and skills to leverage AI tools to address real-world challenges as the industry evolves. From modelling environmental systems to predicting complex interactions, AI offers a promising avenue for innovation and efficiency. Engineers worldwide face practical challenges that AI can help solve, making this knowledge relevant and essential.
Participants will delve into the latest advancements in AI applications, focusing on their relevance to practical engineering challenges. The course will cover various AI approaches, from data acquisition and preprocessing to classification methods and modelling tools. Through hands-on examples and case studies, participants will learn to apply these techniques to model and predict environmental systems, gaining the expertise needed to enhance their engineering practice.
By the end of this course, you will clearly understand how AI can be integrated into Civil and Environmental Engineering to improve decision-making, optimize processes, and solve pressing environmental issues. You'll leave with practical skills and a toolkit of AI methodologies ready to be applied to your work.
Who Should Attend
This course is designed for various professionals, including civil and environmental engineers, project engineers, and managers eager to elevate their technical expertise and leverage AI solutions to tackle complex engineering challenges. Whether involved in design, analysis, or project management, this course offers valuable insights that will enhance your ability to incorporate AI into your work, ultimately driving innovation and efficiency in your projects.
Consultants, designers, and planners will particularly benefit from the course content, which provides an in-depth understanding of how AI can be employed to optimize design processes, forecast environmental impacts, and streamline project workflows. The practical examples and case studies will equip you with the skills to apply AI-driven methodologies to real-world scenarios, helping you stay at the forefront of industry advancements.
Course Syllabus
Data acquisition and preprocessing
- Gathering the data
- Outlier detection
- Transferring raw information into usable data
- Splitting the data into training & testing sets.
Classification methods
- Decision Tree (DT)
- M5 prime (M5’)
- K-nearest neighbour algorithm (KNN)
- Support Vector Machine (SVM)
Post-processing
- Analysis of statistical indices
- Scatter plot
- Box plot
Artificial Intelligence (AI) Modeling tools
- Multilinear regression (MLR)
- Multivariate adaptive regression splines (MARS)
- Multi-layer perceptrons (MLP)
- Adaptive network-based fuzzy inference system (ANFIS),
- Extreme learning machines (ELM)
Hands-on Projects in Civil and Environmental Engineering
Questions and Answers and Feedback to Participants on Achievement of Learning Outcomes
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COURSE CREDIT
Almost all of EPIC's courses offer :
- 1.4 Continuing Education Units (CEUs) and
- 14 Professional Development Hours (PDHs)
These course credits will help attendees earn training requirements for their associations or provincial governing bodies.







