Low code helps smart water affairs to achieve safe water supply

Get the Jiema product experience account from the Jiema official website, just open the following address with a browser (recommended browser), you need to pick it up yourself:

http://dev.gemcoder.com/front/development/index.html#/officialLogin?jm=cmVnaXN0ZXI9dHJ1ZQ%3D%3D

With the implementation of national smart city and water industry related policies, my country's smart water industry is facing huge opportunities for development. However, the informatization construction of my country's water industry is facing a series of challenges. The long period of informatization construction and the lack of unified technical standards and data standards have led to serious problems of information islands, limited collaborative work capabilities, and lack of reliable data support and scientific basis for production scheduling and operational analysis. In order to solve these problems, it is urgent to build a big data center to achieve the goal of measurable, controllable, visible and serviceable in the whole process.

1. The "Pain of Transformation" of the Traditional Water Industry

The traditional water industry faces many pain points in order to achieve digital transformation. At present, these pain points can be summarized as the following:

(1) The distribution of water plant areas and stations is scattered, which increases the difficulty of information integration.

(2) The visualization and intelligence of process facilities and software need to be improved.

(3) Avoid the waste and idleness of early infrastructure, and combine with the hardware facilities of the current smart water system to avoid repeated investment in facilities.

(4) At present, centralized monitoring cannot be realized, data such as equipment operation status cannot be automatically recorded in real time, and data analysis capabilities are lacking.

The core goal of building a smart water visualization platform is to solve the problems of measurability, controllability, visualization and serviceability in the water industry. By accumulating and exporting common data capabilities of the water industry on the horizontal platform, flexible business control and visualization requirements can be realized, business innovation in the water industry can be accelerated, efficiency can be improved and costs can be reduced.

2. The overall structure of smart water affairs

The construction of smart water services requires the integration of relevant data, including 3D visualization data, GIS data, business data, etc. Through data integration and development, complete data assets can be obtained, and a low-code development platform can be used to quickly build smart water large-screen and PC-side application platforms. These platforms can display the statistics, analysis and visualization results of massive data, and realize the comprehensive connection of water supply, drainage, sewage, ecology and other links. Furthermore, the smart water system can realize special applications such as digital twins, production scheduling, leakage management, and marketing analysis.

The overall structure of smart water affairs is as follows:

3. Cases of smart water affairs

The digital transformation of the water industry can be realized by using the Magma low-code platform and the smart water construction model, combined with information technologies such as the Internet of Things and artificial intelligence. Through data visualization, the threshold of technology development is lowered, the investment of time, manpower and material resources is reduced, and the digitalization capability of the industry is improved.

To help water companies realize the digitization and visualization of business, it is necessary to deposit water data on the data platform in a unified manner, realize the unified processing and analysis of water data by the water department, and feed back the analysis results to the business. Improve the efficiency of water enterprises by visually displaying the production operation and business decision-making of water affairs data.

At present, some villages and towns in Hangzhou City, Zhejiang Province have successfully implemented a smart water system based on the Magma low-code development platform. By using functions such as Web components, GIS components, and large-screen components, and drag-and-drop construction of multi-scenario industry templates, process nodes and flow direction modules can be customized, and the smart water visualization platform can be flexibly configured. In this way, the whole process of water production, water supply and water sales can be visualized, measured and controlled, so as to ensure the safety of water supply and improve the quality of water supply.

For example, the design scale of a water plant in a certain place in Zhejiang is 200,000 tons/day, but there are problems such as low automatic control accuracy, excessive reliance on manual experience, high production energy consumption and cost, and backward production management. Digital transformation is urgently needed . The smart water digital twin system built through the Jiema low-code platform can cover the entire business, process and process of the water plant. Using 3D real-scene simulation technology to establish a digital twin water plant, integrating data such as water plant SCADA, equipment asset management, and security. In this way, the operation process of the water plant can be digitized and transparent, and the goals of visualization, measurability, controllability and serviceability can be achieved.

Case display:

The Magma low-code platform is not only applicable to the field of smart water affairs, but also widely used in the development of various applications such as smart transportation, smart parks, smart villages, smart medical care, and smart campuses. Using the Magma low-code platform, project development efficiency has increased by an average of 80%, and the delivery rate has reached 100%. This effectively enhances the core competitiveness of enterprises in the field of intelligence.

Guess you like

Origin blog.csdn.net/Gemcoder/article/details/132361289