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2024 | OriginalPaper | Buchkapitel

Evaluation of Physical Properties and Time-Series Prediction of Long-Term Durability for Improved Ground by Ultrafine Particle Grouting Materials

verfasst von : Sudip Shakya, Shinya Inazumi

Erschienen in: Natural Geo-Disasters and Resiliency

Verlag: Springer Nature Singapore

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Abstract

In Japan, lots of cities are suffering from land subsidence problems, resulting from liquefaction due to its soft ground constitution. Among the various preventive and/or mitigation measures practiced for combating it, the chemical injection method is commonly selected for it with the intention of increasing the strength of the ground. However, the limitation of this technology lies in the scarcity of data on the probable influence and effectiveness of the sprayed chemicals over the long-term period into the surrounding grounds. It is necessary to study in detail to ensure that incidents like chemical accidents do not occur in the future due to the failure in strength over the long-term period. Therefore, the objective of this study will be the evaluation of ultrafine particle grouting materials properties in terms of durability over the long-term period by using the prediction method. The results generated by these prediction methods are verified by comparing them with the test results. In this study, the prediction is made by the Autoregressive integrated moving average (ARIMA) model, machine learning predictive model (MLPM), and state-space representation model (SSRM). For the lower input data amount, the results generated by the ARIMA model can be of higher precision comparatively, but the margin of error is still high. Thus, in order to conclude on the best model, a higher degree of research is required to identify all other influencing parameters and comparative studies of other methods.

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Literatur
1.
Zurück zum Zitat Aksoy CO (2007) Chemical injection application at tunnel service shaft to prevent ground settlement induced by groundwater drainage: a case study. Int J Rock Mech Mining Sci 45:376–383CrossRef Aksoy CO (2007) Chemical injection application at tunnel service shaft to prevent ground settlement induced by groundwater drainage: a case study. Int J Rock Mech Mining Sci 45:376–383CrossRef
4.
Zurück zum Zitat McElroy T (2008) Finite sample revision variances for ARIMA model-based signal extraction. J Off Statist 24(3):451–467 McElroy T (2008) Finite sample revision variances for ARIMA model-based signal extraction. J Off Statist 24(3):451–467
11.
Zurück zum Zitat Puri N, Prasad HD, Jain A (2018) Prediction of geotechnical parameters using machine learning techniques. Procedia Comput Sci 125:509–517CrossRef Puri N, Prasad HD, Jain A (2018) Prediction of geotechnical parameters using machine learning techniques. Procedia Comput Sci 125:509–517CrossRef
Metadaten
Titel
Evaluation of Physical Properties and Time-Series Prediction of Long-Term Durability for Improved Ground by Ultrafine Particle Grouting Materials
verfasst von
Sudip Shakya
Shinya Inazumi
Copyright-Jahr
2024
Verlag
Springer Nature Singapore
DOI
https://doi.org/10.1007/978-981-99-9223-2_27