Wst 47(12) 057-064
نویسندگان
چکیده
In this paper the results are presented of original research into the automatic and “intelligent” detection of breakpoints in Dissolved Oxygen (DO) profiles. The research has been based on a large body of data collected from laboratory SBRs operating on synthetic wastewater. Two different approaches were followed to identify the endpoints. The paper analyses and evaluates the results of automatic breakpoint detection on the basis of geometric features in the DO profiles. This was followed by classification of the detected breakpoints using different soft computing techniques based on Neural Network (NN), Fuzzy Neural Network (FuNN) and Evolving Fuzzy Neural Network (EfuNN) software systems for breakpoint classification. A high rate of successful detection and classification was obtained with up to 96% of the decisions made correctly. In order to overcome the limitations of this system to adapt to dynamically changing process conditions, an intelligent control model was developed by a combination between an Evolving Fuzzy Neural Net (EfuNN) combined with a logic decision unit. This system has the ability to “learn on-the-fly” and adjust its response pattern in order to maintain a high rate of successful breakpoint detection under varying changing process conditions. This software system has been successfully embedded on a small programmable controller for integration into larger process control systems for the operation of SBR plants.
منابع مشابه
Practical and Robust MLS-based Integration of Scanned Data
The paper proposes a set of techniques for improving the quality of MLS surfaces reconstructed from point clouds that are composed by the union of many scanned range maps. The main idea of those techniques is that the range-map structure should be exploited during the reconstruction process and not lost in the uniform point soup that is usually fed into reconstruction algorithms; on this purpos...
متن کاملEvaluation of 3D Interest Point Detection Techniques
In this paper, we compare the results of five 3D interest point detection techniques to the interest points marked by human subjects. This comparison is used to quantitatively evaluate the interest point detection algorithms. We asked human subjects to look at a number of 3D models, and mark interest points on the models via a web-based interface. We propose a voting-based method to construct g...
متن کاملEfficient Bounds for Point-Based Animations
We introduce a new and efficient approach for collision detection in point-based animations, based on the fast computation of tight surface bounds. Our approach is able to tightly bound a high-resolution surface with a cost linear in the number of simulation nodes, which is typically small. We extend concepts about bounds of convex sets to the point-based deformation setting, and we introduce a...
متن کاملInteractive Exploration of Gigantic Point Clouds on Mobile Devices
New embedded CPUs that sport powerful graphics chipsets have the potential to make complex 3D applications feasible on mobile devices. In this paper, we present a scalable architecture and its implementation for mobile exploration of large point clouds, which are nowadays ubiquitous in the cultural heritage domain thanks to the increased performance and availability of 3D scanning techniques. T...
متن کاملImage Statistics for Clustering Paintings According to their Visual Appearance
Untrained observers readily cluster paintings from different art periods into distinct groups according to their overall visual appearance or “look” [WCF08]. These clusters are typically influenced by both the content of the paintings (e.g. portrait, landscape, still-life, etc.), and stylistic considerations (e.g. the “flat” appearance of Gothic paintings, or the distinctive use of colour in Fa...
متن کامل