Big Data Analytics as Game Changer in Dealing Impact of Climate
Change in Malaysia: Present and Future Research
Mohammad Fikry Abdullah
1,2
, Mohd Zaki Mat Amin
2
, Zurina Zainol
2
and
Marini Mohamad Ideris
2
1
Leeds University Business School, University of Leeds, Leeds, U.K.
2
National Hydraulic Research Institute of Malaysia (NAHRIM), Selangor, Malaysia
Keywords: Big Data Analytics, Analytical Capabilities, Decision Making, Climate Change.
Abstract: Data has become a vital and vigorous resource to support the organisation in a data-driven decision-making
environment. The emergence of digital transformation has revolutionised data utilisation and management
ecosystem, which translated and upscaled the value of data to become a new asset in the organisation.
Realisation on the importance of data, Big Data Analytics (BDA) in organisations is part of initiatives to
harvest and maximise the potential use of data through data analytics capabilities. N-HyDAA development
has encapsulated BDA through integration and analytics of data, information, knowledge and expertise from
the expert group in dealing with issues related to the impact of climate change such as water-related disaster
and water resources management. Based on N-HyDAA capabilities, there are more potentials and
opportunities in the new research area to explore for better cohesion in supporting decision-making.
1 CLIMATE CHANGE &
MALAYSIA SCENARIO
Climate change (CC) is no longer rhetoric; it is real
and confirmed as the impact of CC is real and
happening. The changes in climate will aggravate the
risks and effects to the country, where it will cause
billions of losses from economic, environmental, and
social aspects. CC is not just a meteorological issue.
It is beyond such changes in temperature, rainfall
pattern or sea-level rise. The changes in one aspect
may lead to another aspect. Changes in rainfall
intensity will cause a significant effect on water level
and water quality. Changes in sea-level rise will affect
the land use development in the coastal area.
The evidence for rapid CC is getting compelling
and persuasive from series of indicators identified
such as global temperature rise, warming oceans,
shrinking ice sheets, glacial retreat, decreased snow
cover, sea-level rise, declining arctic sea ice, extreme
events, and ocean acidification. One of the significant
impacts of CC is the frequency and incidence of a
natural disaster where it becomes more extreme and
created dangerous consequences such as severe flood
and drought events. Unusual and unique events such
as tsunami, typhoon, landslide, which are previously
rare become more frequent and higher in magnitude
compare to the past.
Thus, extensive strategies are required in
employing mitigation and adaptation planning to
undermine the impact and vulnerability of CC.
Malaysia Government has given a serious
commitment in CC aspects at national and
international levels. Through 21
th
Conference of the
Parties to the United Nations Framework Convention
on Climate Change (COP21) in 2015, the
implementation of CC adaptation has been
emphasized by Malaysia especially for water security
and availability, coastal, food and health sectors.
During COP24, Malaysia has expressed its
continuing commitment to reducing Greenhouse
Gases emissions by 25% by 2030.
Climate-related natural disasters cost Malaysia
approximately USD1.8b from 1998 to 2018, where
the impact on Malaysia is apparent and varies from
floods, storms, droughts and other extreme weather
events (Zurairi, 2018). Recognising the impact of the
CC in Malaysia, NAHRIM's involvement in issues
related to impact of the CC has begun since 2008 with
the appointment of NAHRIM as the Regional Water
Knowledge Hub for Climate Change and Adaptation.
Since then, various studies have been exercised by
Abdullah, M., Mat Amin, M., Zainol, Z. and Mohamad Ideris, M.
Big Data Analytics as Game Changer in Dealing Impact of Climate Change in Malaysia: Present and Future Research.
DOI: 10.5220/0009794404610469
In Proceedings of the 5th International Conference on Internet of Things, Big Data and Security (IoTBDS 2020), pages 461-469
ISBN: 978-989-758-426-8
Copyright
c
2020 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
461
NAHRIM for adaptation, adoption, and mitigation
strategies and policy in tackling issues in CC.
From studies conducted, voluminous data are
created and recreated which supports various R&D
activities aligned with sustainable development as
well as reduce the risk and impact of CC. Abdullah,
Ibrahim, and Zulkifli (2017a) mentioned data
management process for a natural disaster is
challenging due to its presence in large volume and
heterogeneous sources. In addition to that, the
emergence of technology and trend of using
projection data plays imperative roles in managing
issues related to CC nowadays.
2 BIG DATA ANALYTICS (BDA) &
DATA ANALYTICS
CAPABILITIES CONCEPT
2.1 Big Data Analytics (BDA) Concept
Kaisler, Armour, Espinosa, and Money (2013)
defined BDA as the amount of data beyond
technologies capability to store, manage and process
efficiently which the limitations are only discovered
by a robust analysis of the data itself, explicit
processing needs, and the capabilities of the tools
used to analyse it.
BDA has been escalating in various sectors as it
increases the value of data in organisations for
different purposes. The awareness and understanding
of BDA among top management have been
familiarised to ensure how data can be analysed,
improved and enriched to become a new key
economic factor that can alleviate an organisation’s
performance (Abdullah et al., 2017a).
As reported by Meulen and Rivera (2014)
decision-maker must expand their efforts and
understanding to move organisations from using
traditional Business Intelligence that addresses
descriptive analysis (what happened) to advanced
analytics, which complements by answering the
"why," the "what will happen," and "how we can
address it".
BDA movement is driven by the fact that massive
amounts of very high-dimensional or unstructured
data are continuously produced and stored with much
cheaper cost than they used to be (Fan, Han, & Liu,
2014). This trend will have a deep impact on science,
engineering and business that offer new opportunities
and new challenges in data analysis (Fan et al., 2014).
BDA creates a radical shift in how we think about
research, thus reframing critical questions about the
constitution of knowledge, research processes,
information engagement, and the nature and
categorisation of reality (Boyd & Crawford, 2012).
BDA give promises for (i) exploring the hidden
structures of each subpopulation of the data, which is
not feasible and been treated as ‘outliers’ when the
sample size is small; (ii) extracting important
common features across many subpopulations even
when there are large individual variations (Fan et al.,
2014).
2.2 Data Analytics Capabilities
BDA capabilities are a form of concept broadly used
to determine the ability to exploit data analytics to
develop capabilities which equip it to develop costly-
to-imitate capabilities in the big data environment,
where different levels of big data and BDA capability
can influence and inform organisation decisions
(Amankwah-Amoah & Adomako, 2019). Apart from
that, data analytics support streamlining organisation
internal processes, identify trends, interpret and
monitor emerging risks and build a mechanism for
feedback and improvement through analytical
interpretation, recommendation, explanation and
solutions (George, 2018; Singh, 2018).
Demand for delivery of data and analytics at the
optimal point of impact will drive innovative machine
learning and, predictive and prescriptive analytics
integration from the core to the edge of the enterprise
which capitalises and trigger opportunities that can be
identified based on active, dynamic and empowered
(Hagerty, 2016).
Data and analytics are the brains of the
organisations that require proactive and reactive plans
that drive modern organisation operations in
decisions, interactions and processes to support the
organisation and IT outcomes (Hagerty, 2016).
Understanding the purpose behind analytics, trends,
shifts, and patterns are among the critical elements
that will avoid issues and misunderstanding of BDA
project implementation where decision-makers need
to understand the correlations between key variables
and engaging in problem-solving (Mark, 2016).
3 BACKGROUND OF STUDY:
BDA FOR CC IN MALAYSIA
Studies conducted by Yang, Su, and Chen (2017) and
Rahman, Di, and Esraz-Ul-Zannat (2017) explained
BDA play a vital role and can help in all four phases
of disaster management: prevention, protection,
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462
mitigation, response and recovery, and also help in
taking actions to improve resilience to disasters. The
impact of BDA in environment and natural resources
covered diversified areas such as data management
(Faghmous & Kumar, 2014), decision-making
(Abdullah et al., 2018; Ford et al., 2016); application
(Hassani, Huang, & Silva, 2019; Lopez &
Manogaran, 2016) and so forth.
Based on studies conducted in BDA for CC
ecosystem, NAHRIM as a water and environment
research institute had started data analytics journey in
2015 through development of framework on BDA for
natural disaster management in Malaysia (Abdullah
et al., 2017a) and later continued with development
of Malaysia Climate Change Knowledge Portal (N-
HyDAA) as a knowledge portal for analytical
processing of hydro climatic data (Abdullah, Ibrahim,
& Zulkifli, 2017b).
N-HyDAA used BDA technology to accelerate
data processing with customisable computation
functions by utilising multi-cores and many-cores
(GPU) technologies. N-HyDAA was developed to
assist NAHRIM in visualising and analysing 1450
simulation-years of projected hydro-climate data for
Peninsular Malaysia based on 3,888 grids for 90
years. There are eight modules developed in N-
HyDAA, namely Drought, Drought & Temperature,
Rainfall & Runoff, Storm Centre, Streamflow,
Climate Change Factor, Water Stress Index (WSI)
and WSI Simulation.
Stimulation and optimisation of hydro climatic
data using BDA technology support the digital
transformation by revolutionising the way data has
been treated to support decision-making in dealing
with CC issues. The development of N-HyDAA was
recognised at the national level and international level
(Geospatial World, 2018) (APICTA, 2017) for its
innovation on applying BDA technology as a new
instrument for handling issues in environment and
water resources, especially in CC.
Details on N-HyDAA’s development and
application in various domain related to water and
environment can be read from Abdullah et al. (2018),
Abdullah et al. (2017b), Mat Amin (2016), Mohamed,
Mat Amin, Md Adnan, and Abdullah (2018) and
Ideris, Abdullah, Mat Amin, and Zainol (2018).
4 N-HyDAA: CASES STUDY OF
WATER YIELDS & WATER
STRESS IN MALAYSIA
Future water yields based on simulated future runoff
were evaluated on four different gas emissions
scenarios (B1, A1B, A2 and A1FI) by means of an
average of 14 projections (A1B, A2 and B1), average
A1B, average A2 and average B1 for period 2010
2100. The historical simulations were based on the
average runoff from three control run GCMs
(CCSM3, ECHM5 and MRI). Using N-HyDAA the
voluminous simulated data has been investigated
thoroughly using N-HyDAA. The result of water
yields for historical and future periods of 2030 and
2050 for 80 districts are given in Figures 1 and 2
respectively.
Figure 1: Comparison between simulated historical and
future water yields in 2030 (billion cubic meter) BCM.
Water yields in 2030 under the average of 14
scenarios, A1B and A2 are projected to increase
compared to historical period (by 2 BCM to 8 BCM)
except for B1 where the water yield is projected to
decrease by 3 BCM (Figure 1). In 2050, water yields
for all scenarios are projected to increase with a range
of 8 BCM to 17 BCM and the largest change of 195
BCM was obtained from the average A2 scenario.
Generally, the projected water yields for all districts
show increasing trends (more water), with the
exception of a few districts in Kedah and Johor.
In the context of WSI, the approach developed by
Stephen Pfister was used to construct the district-
based water stress indices through projected water
yield and water demand that is possibly impacted by
CC conditions. WSI is defined as an index calculated
based on Stephen Pfister’s model to represent the
level of water stress in a specific area by means of a
ratio of total water demand or consumption against
water yield or availability (Brown & Matlock, 2011).
Big Data Analytics as Game Changer in Dealing Impact of Climate Change in Malaysia: Present and Future Research
463
Figure 2: Comparison between simulated historical and
future water yields in 2050 (BCM).
Figure 3: WSI for each scenario based on district in 2030.
Figure 4: WSI for each scenario based on district in 2050.
The constructed district based on WSI for the
respective districts and time horizons are given in
Figure 3 and 4 for 2030 and 2050 respectively. WSI
is divided in to five stress categories namely, low
(<0.1); medium-low (0.1-0.2); moderate (0.2-0.5);
high (0.5-0.8) and extremely high (>0.8). Nearly high
and extremely high WSI are located in the West Coast
particularly in urban and high populated areas, and
also irrigation schemes. Overall, the highest and
smallest average WSI are projected Penang-Perlis-
Kedah-Klang Valley-Johor Bharu and Pahang-
Terengganu respectively.
Figure 5 shows the constructed WSI for the
average 14 scenarios in 2030 and 2050 whereby the
marked areas are the projected districts with the
increased WSI. For example, the high WSI in Sabak
Bernam, Selangor would affect the irrigation water
availability for Barat Laut Selangor Integrated
Agricultural Development Authority (IADA-BLS)
irrigation scheme, On the other hand, the extremely
high WSI in Johor Bharu will pose challenges to
Syarikat Air Johor (SAJ) to provide sufficient treated
water supply to the consumers.
Figure 5: WSI Comparison for AIB scenario in 2030 and
2050.
5 DISCUSSION AND FUTURE
RESEARCH AREA
BDA has reformed the way of data optimisation for
better utilisation and value with the integration of
analytical skills and representation of data and
information. The capability of BDA to create and
transform data to insight for supporting decision-
making evolved since the introductory of BDA in
various domains of application such as human
resource, disaster management, and business and how
it can improve the efficiency and effectiveness of the
business process, whether in supporting, operational
and management processes.
Decision-making becoming vital in managerial
process for a quality and cohesive decisions. Multi-
criteria decision making (MCDM), is a decision-
making process based on the progression of using
methods and procedure of multiple conflicting
criteria into the management planning process (Umm
e, Asghar, & Ieee, 2009) which is a target to resolve
problems having multiple objectives (Liu & Stewart,
2004).
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MCDM can be defined as a collection of
methodologies for comparison, ranking and selecting
multiple alternatives having multiple attributes
(Levy, 2005). Numerous factors involved in decision-
making, which is impossible to rely on a single
criterion attribute or point of view (Zopounidis &
Doumpos, 2000). Thus, decision-maker is required to
select among several quantifiable or non-quantifiable
and several criteria (Pohekar & Ramachandran,
2004). Therefore, MCDM emerged as a hallmark and
new branch for supporting the decision-making
process (Umm e et al., 2009).
Table 1 summarised initial finding based on the
MCDM methods on three domains which revealed
natural disaster, water resource management and
policy and strategy planning are the most applied
MCDM method. Through a further details study, the
domain can be expanded and covering more extensive
areas related to CC focusing on projection data from
N-HyDAA.
Table 1: Application of MCDM in CC Domains.
Domain Sub-Domain Autho
r
Natural
Disaster
flood,
drought
Karamouz, Zeynolabedin,
and Olyaei (2015); Lee,
Choi, and Jun (2017); Song
and Chung (2016);
Zahmatkesh and Karamouz
(2017)
Policy
& Strategy
Planning
adaptation,
mitigation,
sustainable
development,
vulnerability
Buyukozkan and Uzturk
(2018); Chakraborty,
Sahoo, Majumdar, Saha,
and Roy (2019); Mardani,
Jusoh, Zavadskas,
Cavallaro, and Khalifah
(2015); Mensour, El
Ghazzani, Hlimi, and Ihlal
(2019); Ramya and Devadas
(2019); Simsek, Watts, and
Escobar (2018); Zavadskas,
Cavallaro, Podvezko,
Ubarte, and Kaklauskas
(2017); Zhu, Li, and Feng
(2019); ;
Water
Resource
Management
water
allocation,
groundwater
study,
water
system,
Alhumaid, Ghumman,
Haider, Al-Salamah, and
Ghazaw (2018); Amineh,
Hashemian, and Magholi
(2017); Birgani and
Yazdandoost (2018); Chung
and Kim (2014); Duan,
Deng, Deng, and Wang
(2016); Golfam, Ashofteh,
Rajaee, and Chu (2019)
Based on a study conducted by Akter and Wamba
(2017), there are a lot of opportunities to discover
significant research on big data and disaster
management area. In the area of a crisis analytics
platform, potential research can be focusing on
prescriptive analytics and models that integrate the
knowledge and expertise from subject matter experts,
practitioner and stakeholders. Integration knowledge
and insight from expert groups in N-HyDAA are
crucial in supporting the decision-making process
apart from relying on analytical data.
Leveraging the culture of BDA must be part of
strategic management, where emphasising on a
holistic and cohesive BDA culture across various
business core function without neglecting the
analytical competencies of the organisation either
from aspect technology, analytical capacity (people)
and process. It is imperative to develop skills in
analytics capabilities and to nurture the competence
for ensuring organisational agility, which requires
more knowledge exploration and experience that
needs to be shared and disseminate within the
organisation.
Apart from that, in every analysis stage, different
data analytics capabilities are essential and required
further understanding of analytics elements and data,
information, knowledge and wisdom concept can be
implemented in supporting the decision-making
process (Lokers, Knapen, Janssen, van Randen, &
Jansen, 2016). Factors or elements that contributed to
building data analytics capabilities need further
consideration for better delivery of hindsight, insight
and foresight among others is to practice right-fit
analytics in the BDA project (Deloitte, 2019).
Analysing data in BDA helps in answering
questions (1) What happened?, (2) Why did it
happen?, (3) What will happen? and How we can
make it happen? which requires automated and semi-
automated analysis techniques (computation,
statistical analysis, optimisation and AI) to detect
patterns, identify anomalies and extract knowledge
(S, 2017) which explores the potential and value of
data for a better result.
Based on the data analytics techniques adopted in
N-HyDAA, NAHRIM has implied a practice of using
right-fit data analytics capabilities where statistical
analysis is the analytics tools to optimise the value of
the hydroclimatic data to support data and fact-driven
decision-making. Analytics in N-HyDAA focusing
on data-driven data analytics which eminence on
answering questions. The analytics capabilities used
in N-HyDAA are focusing more on descriptive,
diagnostic and predictive analytics; meanwhile,
prescriptive analytics is an area of opportunity to
discover further. According to Delen and Demirkan
(2013), predictive analytics used data and
mathematical algorithms which can rely on data,
expert knowledge or combination of both through
optimisation, simulation, multi-criteria decision,
Big Data Analytics as Game Changer in Dealing Impact of Climate Change in Malaysia: Present and Future Research
465
Table 2: Indicators for CC Vulnerability in Malaysia.
Sector
Indicator
Exposure Sensitivity Adaptive capacity
Water
1. Projected Change of
Water Availability
2. Freshwater withdrawal rate 3. Water storage capacity
4. Projected Decrease in Dry
Season Flow
5. Low flow restricts water
abstraction
6. Supplementary flow from
Off River Storage
7. Projected Change of
Rainfall and Dry Spell
8. Number of farmers affected 9. Dam and pump capacity
10. Projected change in
Groundwater recharge
11. Changes in groundwater
level
12. Conjunctive use of
surface and groundwater
Food &
Commodity
1. Projected change of paddy
yields
2. Paddy field area 3. Agriculture capacity
4. Projected change in palm
oil production
5. Oil palm plantation area
6. Water conservation
practices
Infrastructure
1. Projected change of flood 2. Flood prone area
3. Structural and non-
structural approaches
4. Sea Level Rise Projection
5. Population living below 3m
above mean sea level.
6. Disaster preparedness
7. Projected increase in
extreme flow
8. Frequency of dam overspill
9. Risk Management
Plan/dam upgrading/dam
safet
y
review
10. Projected change of river
runoff
11. Reduction in the
hydropower energy
generation
12. Renewable Energy (RE)
expert system and group support systems where the
outcome either best course of action, rich set of
information and expert opinions to be provided to
decision-maker.
Apart from data analytics capabilities, data
produced from N-HyDAA are valuable for further
utilisation in potential CC studies such as CC index
vulnerability and readiness. Using an approach
developed by the University of Notre-Dame through
the Notre-Dame Global Adaptation Index (Chen et
al., 2015), future research in NAHRIM will be
focusing on identifying the current status of CC
vulnerability through assimilation of data from N-
HyDAA with a various dataset. The research will
deliberate various aspects of CC vulnerability
through exposure, sensitivity and adaptive capacity
by developing a customised indicator which
significant in CC scenarios from Malaysia’s context.
This potential research help Malaysia in
identifying the vulnerable areas which are lacking
attention to overcome the impacts of CC. Table 2
shows a list of indicators for vulnerability developed
through customisation by NAHRIM based on
Malaysia CC scenario. Three main sectors have been
identified that are vulnerable and affected due to the
impact of CC in Malaysia. The combination and
simulation of N-HyDAA with identified indicator
data able to provide an index of vulnerability where
the mechanism of the index calculation is still open
for future discussion. Methodology as discussed
earlier, such as MCDM, has the potential to be
imposed in this future research as well as normal
statistical analysis or replicating the same method as
developing in ND-GAIN.
For future research opportunities, N-HyDAA
showing the potential and capability of serving an
immerse application domain in the CC area and its
analytical capabilities have a considerable potential to
be explored and studied further.
6 CONCLUSIONS
As a conclusion, through the composition of data
analytics capabilities, management of CC data would
be improved, where data preparation, data integration
and data analysis able to enhance decisions and
decision-making process in handling issues impact of
CC.
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Innumerable BDA projects showed a significant
and impactful result on how BDA give a competitive
advantage in term valuing the data and improved
decision-making in various domain. New research
areas for BDA implementation should be explored
more to improve the result and to expand the
capability with the enablement of other domain such
as analytical capabilities, decision-making
methodology, strategic and knowledge management.
The opportunity to discover beyond the current BDA
technology would expand the capabilities and enrich
the outcome and ability of BDA.
ACKNOWLEDGEMENTS
This project funded by the Ministry of Water, Land
and Natural Resources of Malaysia (KATS) and we
are thankful to our environmental engineer and
hydrologist for the technical expertise.
REFERENCES
Abdullah, M. F., Ibrahim, M., & Zulkifli, H. (2017a). Big
Data Analytics Framework for Natural Disaster
Management in Malaysia. Paper presented at the The
2nd International Conference on Internet of Things, Big
Data and Security (IoTBDS 2017), Porto, Portugal.
Abdullah, M. F., Ibrahim, M., & Zulkifli, H. (2017b). Big
Data Technology Implementation in Managing Water
Related Disaster: NAHRIM's Experience
Abdullah, M. F., Mat Amin, M. Z., Mohamad, M. F.,
Mohamad Ideris, M., Zurina, Z., & Yussof, N. Y.
(2018). N-HyDAA - Big Data Analytics for Malaysia
Climate Change Knowledge Management. Paper
presented at the HIC 2018. 13th International
Conference on Hydroinformatics, Palermo, Italy.
Akter, S., & Wamba, S. F. (2017). Big data and disaster
management: a systematic review and agenda for future
research. Annals of Operations Research, 1-21.
Alhumaid, M., Ghumman, A. R., Haider, H., Al-Salamah,
I. S., & Ghazaw, Y. M. (2018). Sustainability
Evaluation Framework of Urban Stormwater Drainage
Options for Arid Environments Using Hydraulic
Modeling and Multicriteria Decision-Making. Water,
10(5). doi:10.3390/w10050581
Amankwah-Amoah, J., & Adomako, S. (2019). Big data
analytics and business failures in data-Rich
environments: An organizing framework. Computers in
Industry, 105, 204-212.
Amineh, Z. B. A., Hashemian, S., & Magholi, A. (2017).
Integrating Spatial Multi Criteria Decision Making
(SMCDM) with Geographic Information Systems
(GIS) for delineation of the most suitable areas for
aquifer storage and recovery (ASR). Journal of
Hydrology, 551, 577-595. doi:10.1016/j.jhydrol.2017.
05.031
APICTA. (2017). APICTA 2017 Winner. Retrieved from
https://www.apicta.org/winners/2017-bangladesh
Birgani, Y. T., & Yazdandoost, F. (2018). An Integrated
Framework to Evaluate Resilient-Sustainable Urban
Drainage Management Plans Using a Combined-
adaptive MCDM Technique. Water Resources
Management, 32(8), 2817-2835. doi:10.1007/s11269-
018-1960-2
Boyd, D., & Crawford, K. (2012). Critical questions for big
data: Provocations for a cultural, technological, and
scholarly phenomenon. Information, communication &
society, 15(5), 662-679.
Brown, A., & Matlock, M. (2011). A review of water
scarcity indices and methodologies. The Sustainability
Consortium, 106, 19. Retrieved from https://pdfs.
semanticscholar.org/7f3d/b485feaf71fad95863ca4b56
0bb5b27770ec.pdf
Buyukozkan, G., & Uzturk, D. (2018). 2-tuple combined
group decision making methodology for climate change
strategy selection (Vol. 11).
Chakraborty, S., Sahoo, S., Majumdar, D., Saha, S., & Roy,
S. (2019). Future Mangrove Suitability Assessment of
Andaman to strengthen sustainable development.
Journal of Cleaner Production, 234, 597-614.
doi:10.1016/j.jclepro.2019.06.257
Chen, C., Noble, I., Hellmann, J., Coffee, J., Murillo, M., &
Chawla, N. (2015). University of Notre Dame Global
Adaptation Index Country Index Technical Report.
Retrieved from https://gain.nd.edu/assets/254377/
nd_gain_technical_document_2015.pdf
Chung, E. S., & Kim, Y. (2014). Development of fuzzy
multi-criteria approach to prioritize locations of treated
wastewater use considering climate change scenarios.
Journal of Environmental Management, 146, 505-516.
doi:10.1016/j.jenvman.2014.08.013
Delen, D., & Demirkan, H. (2013). Data, information and
analytics as services. Decision Support Systems, 55(1),
359-363. doi:https://doi.org/10.1016/j.dss.2012.05.044
Deloitte. (2019). Building your data analytics capabilities,
Deliver hindsight, insight and foresight. Retrieved from
https://www2.deloitte.com/ng/en/pages/deloitte-
analytics/articles/building-your-data-analytics-
capabilities.html
Duan, H. J., Deng, Z. D., Deng, F. F., & Wang, D. Q.
(2016). Assessment of Groundwater Potential Based on
Multicriteria Decision Making Model and Decision
Tree Algorithms. Mathematical Problems in
Engineering. doi:10.1155/2016/2064575
Faghmous, J., & Kumar, V. (2014). A Big Data Guide to
Understanding Climate Change: The Case for Theory-
Guided Data Science. Big data, 2, 155-163.
doi:10.1089/big.2014.0026
Fan, J., Han, F., & Liu, H. (2014). Challenges of big data
analysis. National science review, 1(2), 293-314.
Ford, J. D., Tilleard, S. E., Berrang-Ford, L., Araos, M.,
Biesbroek, R., Lesnikowski, A. C., . . . Bizikova, L.
(2016). Opinion: Big data has big potential for
applications to climate change adaptation. Proceedings
Big Data Analytics as Game Changer in Dealing Impact of Climate Change in Malaysia: Present and Future Research
467
of the National Academy of Sciences, 113(39), 10729-
10732. doi:10.1073/pnas.1614023113
George, A. (2018). Business analytics: The essentials of
data-driven decision-making. Retrieved from
https://www.zdnet.com/article/business-analytics-the-
essentials-of-data-driven-decision-making/
Geospatial World. (2018). Asia Geospatial Awards 2017
winners announced at GeoSmart Asia. Retrieved from
https://www.geospatialworld.net/news/asia-geospatial-
awards-2017-winners-announced/
Golfam, P., Ashofteh, P. S., Rajaee, T., & Chu, X. F.
(2019). Prioritization of Water Allocation for
Adaptation to Climate Change Using Multi-Criteria
Decision Making (MCDM). Water Resources
Management, 33(10), 3401-3416. doi:10.1007/s11269-
019-02307-7
Hagerty, J. (2016). 2017 Planning Guide for Data and
Analytics. Retrieved from https://www.gartner.com/en/
documents/3471553/2017-planning-guide-for-data-
and-analytics
Hassani, H., Huang, X., & Silva, E. (2019). Big Data and
Climate Change. Big Data and Cognitive Computing,
3(1). doi:10.3390/bdcc3010012
Ideris, M., Abdullah, M. F., Mat Amin, M. Z., & Zainol, Z.
(2018). Big Data Analytics Technology for Water Risk
Assessment and Management. Retrieved from New
Delhi, India:
Kaisler, S., Armour, F., Espinosa, J. A., & Money, W.
(2013). Big data: Issues and challenges moving
forward. Paper presented at the 2013 46th Hawaii
International Conference on System Sciences.
Karamouz, M., Zeynolabedin, A., & Olyaei, M. A. (2015).
Mapping Regional Drought Vulnerability: A Case
Study. In H. Arefi & M. Motagh (Eds.), International
Conference on Sensors & Models in Remote Sensing &
Photogrammetry (Vol. 41, pp. 369-377). Gottingen:
Copernicus Gesellschaft Mbh.
Lee, G., Choi, J., & Jun, K. S. (2017). MCDM Approach
for Identifying Urban Flood Vulnerability under Social
Environment and Climate Change. Journal of Coastal
Research, 209-213. doi:10.2112/si79-043.1
Levy, J. K. (2005). Multiple criteria decision making and
decision support systems for flood risk management.
Stochastic Environmental Research and Risk
Assessment, 19(6), 438-447.
Liu, D., & Stewart, T. J. (2004). Integrated object-oriented
framework for MCDM and DSS modelling. Decision
Support Systems, 38(3), 421-434.
Lokers, R., Knapen, R., Janssen, S., van Randen, Y., &
Jansen, J. (2016). Analysis of Big Data technologies for
use in agro-environmental science. Environmental
Modelling & Software, 84, 494-504.
Lopez, D., & Manogaran, G. (2016). Big data architecture
for climate change and disease dynamics. The human
element of big data: issues, analytics, and performance,
301-331.
Mardani, A., Jusoh, A., Zavadskas, E. K., Cavallaro, F., &
Khalifah, Z. (2015). Sustainable and Renewable
Energy: An Overview of the Application of Multiple
Criteria Decision Making Techniques and Approaches.
Sustainability, 7(10), 13947-13984.
doi:10.3390/su71013947
Mark, S. (2016). 5 Key Elements Of Analytics To Consider.
In (Vol. 2020).
Mat Amin, M. Z. (2016). Applying Big Data Analytics
(BDA) to Diagnose Hydrometeorlogical related risk
due to Climate Change. Paper presented at the GEO
Smart Asia 2016, Putrajaya, Malaysia.
Mensour, O. N., El Ghazzani, B., Hlimi, B., & Ihlal, A.
(2019). A geographical information system-based
multi-criteria method for the evaluation of solar farms
locations: A case study in Souss-Massa area, southern
Morocco. Energy, 182, 900-919. doi:10.1016/j.energy.
2019.06.063
Meulen, R. v. d., & Rivera, J. (2014). Gartner Says
Advanced Analytics Is a Top Business Priority.
Retrieved from https://www.gartner.com/en/newsroom/
press-releases/2014-10-21-gartner-says-advanced-
analytics-is-a-top-business-priority
Mohamed, A., Mat Amin, M. Z., Md Adnan, N. H., &
Abdullah, M. F. (2018). Projected Hydroclimate Data
Analysis using Big Data Analytics (BDA) Technology
for Smart and Resilient City. Paper presented at the
Smart Cities: Re-Imaging Smart Solutions in Today's
Digital Age Kuala Lumpur, Malaysia.
Pohekar, S., & Ramachandran, M. (2004). Application of
multi-criteria decision making to sustainable energy
planning—A review. Renewable and sustainable
energy reviews, 8(4), 365-381.
Rahman, M. S., Di, L., & Esraz-Ul-Zannat, M. (2017). The
role of big data in disaster management Paper
presented at the Proceedings, International Conference
on Disaster Risk Mitigation.
Ramya, S., & Devadas, V. (2019). Integration of GIS, AHP
and TOPSIS in evaluating suitable locations for
industrial development: A case of Tehri Garhwal
district, Uttarakhand, India. Journal of Cleaner
Production, 238. doi:10.1016/j.jclepro.2019.117872
S, A. (2017). An Overview of Big Data Applications in
Water Resources Engineering. 2, 10-18. doi:10.11648/
j.mlr.20170201.12
Simsek, Y., Watts, D., & Escobar, R. (2018). Sustainability
evaluation of Concentrated Solar Power (CSP) projects
under Clean Development Mechanism (CDM) by using
Multi Criteria Decision Method (MCDM). Renewable
& Sustainable Energy Reviews, 93, 421-438.
doi:10.1016/j.rser.2018.04.090
Singh, H. (2018). Using Analytics for Better Decision-Making.
Retrieved from https://towardsdatascience.com/using-
analytics-for-better-decision-making-ce4f92c4a025
Song, J. Y., & Chung, E. S. (2016). Robustness,
Uncertainty and Sensitivity Analyses of the TOPSIS
Method for Quantitative Climate Change Vulnerability:
a Case Study of Flood Damage. Water Resources
Management, 30(13), 4751-4771. doi:10.1007/s11269-
016-1451-2
Umm e, H., Asghar, S., & Ieee. (2009). A Survey on Multi-
Criteria Decision Making Approaches.
Yang, C., Su, G., & Chen, J. (2017, 10-12 March 2017).
Using big data to enhance crisis response and disaster
IoTBDS 2020 - 5th International Conference on Internet of Things, Big Data and Security
468
resilience for a smart city. Paper presented at the 2017
IEEE 2nd International Conference on Big Data
Analysis (ICBDA)
Zahmatkesh, Z., & Karamouz, M. (2017). An uncertainty-
based framework to quantifying climate change
impacts on coastal flood vulnerability: case study of
New York City. Environmental Monitoring and
Assessment, 189(11), 20. doi:10.1007/s10661-017-
6282-y
Zavadskas, E. K., Cavallaro, F., Podvezko, V., Ubarte, I.,
& Kaklauskas, A. (2017). MCDM Assessment of a
Healthy and Safe Built Environment According to
Sustainable Development Principles: A Practical
Neighborhood Approach in Vilnius. Sustainability,
9(5). doi:10.3390/su9050702
Zhu, S. Y., Li, D. Z., & Feng, H. B. (2019). Is smart city
resilient? Evidence from China. Sustainable Cities and
Society, 50. doi:10.1016/j.scs.2019.101636
Zopounidis, C., & Doumpos, M. (2000). PREFDIS: a
multicriteria decision support system for sorting
decision problems. Computers & Operations Research,
27(7-8), 779-797.
Zurairi, A. (2018). Climate-related natural disasters cost
Malaysia RM8b in last 20 years. MalayMail.
Big Data Analytics as Game Changer in Dealing Impact of Climate Change in Malaysia: Present and Future Research
469