Abstract
This paper summarizes findings of landslide hazard analysis on Penang Island, Malaysia, using frequency ratio, logistic regression, and artificial neural network models with the aid of GIS tools and remote sensing data. Landslide locations were identified and an inventory map was constructed by trained geomorphologists using photo-interpretation from archived aerial photographs supported by field surveys. A SPOT 5 satellite pan sharpened image acquired in January 2005 was used for land-cover classification supported by a topographic map. The above digitally processed images were subsequently combined in a GIS with ancillary data, for example topographical (slope, aspect, curvature, drainage), geological (litho types and lineaments), soil types, and normalized difference vegetation index (NDVI) data, and used to construct a spatial database using GIS and image processing. Three landslide hazard maps were constructed on the basis of landslide inventories and thematic layers, using frequency ratio, logistic regression, and artificial neural network models. Further, each thematic layer’s weight was determined by the back-propagation training method and landslide hazard indices were calculated using the trained back-propagation weights. The results of the analysis were verified and compared using the landslide location data and the accuracy observed was 86.41, 89.59, and 83.55% for frequency ratio, logistic regression, and artificial neural network models, respectively. On the basis of the higher percentages of landslide bodies predicted in very highly hazardous and highly hazardous zones, the results obtained by use of the logistic regression model were slightly more accurate than those from the other models used for landslide hazard analysis. The results from the neural network model suggest the effect of topographic slope is the highest and most important factor with weightage value (1.0), which is more than twice that of the other factors, followed by the NDVI (0.52), and then precipitation (0.42). Further, the results revealed that distance from lineament has the lowest weightage, with a value of 0. This shows that in the study area, fault lines and structural features do not contribute much to landslide triggering.









Similar content being viewed by others
References
Ahmad F, Yahaya AS, Farooqi MA (2006) Characterization and geotechnical properties of Penang residual soils with emphasis on landslides. Am J Environ Sci 2(4):121–128
Akgul A, Bulut F (2007) GIS-based landslide susceptibility for Arsin-Yomra (Trabzon, North Turkey) region. Environ Geol 51(8):1377–1387
Akgun A, Dag S, Bulut F (2008) Landslide susceptibility mapping for a landslide-prone area (Findikli, NE of Turkey) by likelihood-frequency ratio and weighted linear combination models. Environ Geol 54(6):1127–1143(17)
Atkinson PM, Massari R (1998) Generalized linear modeling of susceptibility to landsliding in the central Apennines. Italy Comput Geosci 24(4):373–385
Begueria S (2006) Validation and evaluation of predictive models in hazard assessment and risk management. Nat Hazards 37:315–329
Carro M, De Amicis M, Luzi L, Marzorati S (2003) The application of predictive modeling techniques to landslides induced by earthquakes: the case study of the 26 September 1997 Umbria- Marche earthquake (Italy). Eng Geol 1(2):139–159
Chan NW (1998a) Environmental hazards associated with hill land development in Penang Island, Malaysia: some recommendations on effective management. Disaster Prev Manage Int J 7(4):305–318
Chan NW (1998) Responding to landslide hazards in rapidly developing Malaysia: a case of economics versus environmental protection. Disaster Prev Manage Int J 7(1)
Cheng TA, Lateh H, Peng KS (2008) Intelligence explanation system on landslide dissemination: a case study in Malaysia. In: Proceddings of the first world landslide forum report: Implementing the 2006 Tokyo action plan on the international program on landslides (IPL). 330–333
Choi J, Oh HJ, Won JS, Lee S (2009) Validation of an artificial neural network model for landslide susceptibility mapping. Environ Earth Sci. doi:10.1007/s12665-009-0188-0
Chung CF, Fabbri AG (1999) Probabilistic prediction models for landslide hazard mapping. Photogrammetric Eng Remote Sens 65(12):1389–1399
Clerici A, Perego S, Tellini C, Vescovi PA (2002) Procedure for landslide susceptibility zonation by the conditional analysis method. Geomorphology 48:349–364
Dahal RK, Hasegawa S, Nonomura S, Yamanaka M, Masuda T, Nishino K (2008) GIS-based weights-of-evidence modelling of rainfall-induced landslides in small catchments for landslide susceptibility mapping. Environ Geol 54(2):314–324
Dai FC, Lee CF (2002) Landslide characteristics and slope instability modeling using GIS, Lantau Island, Hong Kong. Geomorphology 42:213–228
Ercanoglu M, Gokceoglu C (2002) Assessment of landslide susceptibility for a landslide-prone area (north of Yenice, NW Turkye) by fuzzy approach. Environ Geol 41:720–730
Gokceoglu C, Sonmez H, Ercanoglu M (2000) Discontinuity controlled probabilistic slope failure risk maps of the Altindag (settlement) region in Turkey. Eng Geol 55:277–296
Guzzetti F, Carrarra A, Cardinali M, Reichenbach P (1999) Landslide hazard evaluation: a review of current techniques and their application in a multi-scale study, Central Italy. Geomorphology 31:181–216
Lamelas MT, Marinoni O, Hoppe A, Riva J (2008) Doline probability map using logistic regression and GIS technology in the central Ebro Basin (Spain). Environ Geol 54(5):963–977
Lee S (2005) Application of logistic regression model and its validation for landslide susceptibility mapping using GIS and remote sensing data. Int J Remote Sens 26:1477–1491
Lee S (2007) Application and verification of fuzzy algebraic operators to landslide susceptibility mapping. Environ Geol 52:615–623
Lee S, Dan NT (2005) Probabilistic landslide susceptibility mapping in the Lai Chau province of Vietnam: focus on the relationship between tectonic fractures and landslides. Environ Geol 48:778–787
Lee S, Pradhan B (2006) Probabilistic landslide risk mapping at Penang Island. Malaysia J Earth Syst Sci 115(6):1–12
Lee S, Pradhan B (2007) Landslide hazard mapping at Selangor, Malaysia using frequency ratio and logistic regression models. Landslides 4:33–41
Lee S, Talib JA (2005) Probabilistic landslide susceptibility and factor effect analysis. Environ Geol 47:982–990
Lloyd DM, Othman A, Wilkinson PL, Anderson MG (2001) Predicting landslides: Assessment of an automated rainfall based landslide warning system. In: K.K.S.Ho and K.S.Li, Geotechnical Engineering—Meeting Society’s Needs, Balkema, 1, 135–139
Ong WS (1993) The geology and engineering geology of Penang Island. Geological Survey of Malaysia, Malaysia
Ooi LH (1999) Rockfall protection: Technical talks, Kuala Lumpur, 28 Oct. 1999, Geological Society of Malaysia, pp 20–32
Paola JD, Schowengerdt RA (1995) A review and analysis of backpropagation neural networks for classificatioin of remotely sensed multi-spectral imagery. Int J Remote Sens 16:3033–3058
Pradhan B, Lee S (2008a) Utilization of optical remote sensing data and GIS tools for regional landslide hazard analysis by using an artificial neural network model at Selangor. Malaysia Earth Sci Front 14(6):143–152
Pradhan B, Lee S (2008b) Landslide risk analysis using artificial neural network model focusing on different training sites. Int J Phys Sci 3(11):1–15
Pradhan B, Singh RP, Buchroithner MF (2006) Estimation of stress and its use in evaluation of landslide prone regions using remote sensing data. Adv Space Res 37:698–709
Pradhan B, Lee S, Mansor S, Buchroithner MF, Jallaluddin N (2008) Utilization of optical remote sensing data and geographic information system tools for regional landslide hazard analysis by using binomial logistic regression model. Appl Remote Sens 2:1–11
Pradhan B, Lee S, Buchroithner MF (2009) Use of geospatial data for the development of fuzzy algebraic operators to landslide hazard mapping: a case study in Malaysia. Appl Geomatics 1:3–15
Refice A, Capolongo D (2002) Probabilistic modeling of uncertainties in earthquake-induced landslide hazard assessment. Comput Geosci 28:735–749
Romeo R (2000) Seismically induced landslide displacements: a predictive model. Eng Geol 58:337–351
Sassa K (2008) Land-use and Landslides – Human-Induced Disasters. Proceddings of the first world landslide forum report: implementing the 2006 Tokyo action plan on the international program on landslides (IPL), pp 1–20
Sin HT, Chan NW (2004) The urban heat island phenomenon in Penang Island: Some observations during the wet and dry season. In: Jamaluddin Md. Jahi, Kadir Arifin, Salmijah Surif and Shaharudin Idrus (eds.). Proceedings 2nd. Bangi World Conference on Environmental Management. Facing Changing Conditions. 13–14 September 2004, Bangi, Malaysia, pp 504–516
Süzen ML, Doyuran VA (2004) Comparison of the GIS based landslide susceptibility assessment methods: multivariate versus bivariate. Environ Geol 45:665–679
Tan BK (1990) Studies on the characteristics of soils and rocks and slope stability in urban areas of Penang island. Research Report, July 1990, Univ. Kebangsaan Malaysia, Bangi, (in Malay). 1990. 80–86
Toh CT (1999) Influence of geology and geological structures on cut slope stability: Technical Talks, Kuala Lumpur, 28 Oct 1999, Geological Society of Malaysia, pp 12–25
Tunusluoglu MC, Gokceoglu C, Nefeslioglu HA, Sonmez H (2008) Extraction of potential debris source areas by logistic regression technique: a case study from Barla, Besparmak and Kapi mountains (NW Taurids, Turkey). Environ Geol 54(1):9–22
Turban E, Aronson JE (2001) Decision Support Systems and Intelligent Systems. Prentice Hall, New Jersey
Varnes DJ (1984) Landslide hazard zonation: a review of principles and practice. Nat Hazards 3:63
Wang HB, Sassa K (2005) Comparative evaluation of landslide susceptibility in Minamata area. Jpn Environ Geol 47:956–966
Youssef AM, Pradhan B, Gaber AFD, Buchroithner MF (2009) Geomorphological Hazard Analysis along the Egyptian Red Sea Coast between Safaga and Quseir. Natural Hazards and Earth System Science, pp 751–766
Zhou G, Esaki T, Mitani Y, Xie M, Mori J (2003) Spatial probabilistic modeling of slope failure using an integrated GIS Monte Carlo simulation approach. Eng Geol 68:373–386
Acknowledgments
B. Pradhan would like to thank the Alexander von Humboldt Foundation (AvH), Germany for awarding a visiting scientist position and adequate funds to carry out research at Dresden University of Technology, Germany. Thanks are due to anonymous reviewers for their critical and valuable comments that helped to bring the manuscript into the present form.
Author information
Authors and Affiliations
Corresponding author
Rights and permissions
About this article
Cite this article
Pradhan, B., Lee, S. Delineation of landslide hazard areas on Penang Island, Malaysia, by using frequency ratio, logistic regression, and artificial neural network models. Environ Earth Sci 60, 1037–1054 (2010). https://doi.org/10.1007/s12665-009-0245-8
Received:
Accepted:
Published:
Issue Date:
DOI: https://doi.org/10.1007/s12665-009-0245-8