In recent years, well-designed terminal-based methods for collecting index data have gradually replaced traditional pen-and-paper methods and have been extensively used in numerous studies. These new approaches offer users increased accuracy, efficiency, consumption, and data compatibility compared to traditional methods. In general, we find that spatial data content and quality index systems vary widely across different arable land regions. Thus, a system for the investigation of arable land quality indices that has the flexibility to utilize various types of spatial data and quality indices without requiring program modification is needed. This paper presents the framework, the module partition, and the structure of the data exchange interface for a highly flexible mobile GIS-based system, which we call the “arable land quality index data collection system” (ALQIDCS). This system incorporates a series of self-adaptive methods, a data table-driven model and two types of formulas for flexible data collection and processing. We tested our prototype system by investigating arable land quality in the Da Xing District, Beijing and in the Te Da La Qi District, Inner Mongolia, China. The results indicate that the ALQIDCS can effectively adapt to variations in spatial data and quality index systems and meet different objectives. The limitations of the ALQIDCS and suggestions for future work are also presented.
[1]
Norian Marranghello,et al.
Mobile application as a tool for urban traffic data collection and generation to Advanced Traveler Information Systems using Wi-Fi networks available in urban centers
,
2012,
2012 IEEE Intelligent Vehicles Symposium.
[2]
Andrew Curtis,et al.
Geospatial video for field data collection
,
2010
.
[3]
Barbara Leporini,et al.
Designing a Mobile Application to Record ABA Data
,
2012,
ICCHP.
[4]
Chantana Phongpensri,et al.
Tool for Collecting Spatial Data with Google Maps API
,
2010,
FGIT-UNESST.
[5]
Xiaodong Zhang,et al.
Design and Implementation of Locust Data Collecting System Based on Android
,
2011
.
[6]
Zhang Xiaoyan,et al.
Information collection system of wheat production risk based on Android smartphone
,
2011
.
[7]
Na Wang,et al.
A germplasm resources data collection and management geographic information system based heavyweight network
,
2013
.