Jewel Rana

60055665100

Publications - 4

Building organizational resilience in emerging economies: Strategic insights from Bangladesh

Publication Name: Sustainable Futures

Publication Date: 2025-12-01

Volume: 10

Issue: Unknown

Page Range: Unknown

Description:

Organizational resilience is a key aspect for sustaining comparative benefit and performance amidst uncertainties such as pandemics, political volatility, and financial crises. Despite its significance, limited studies have explored the potential sufficient solutions to resilience-enabling constructs, especially in emerging economies. This research combines the Resource-Based View (RBV) and Transaction Cost Economics (TCE) to propose a theoretical framework for understanding and predicting organizational resilience. Using survey data from 348 respondents serving corporate industries in Bangladesh, we employ Necessary Condition Analysis (NCA) and fuzzy set Qualitative Comparative Analysis (fsQCA) to identify causal configurations to predict organizational resilience. The findings reveal five configurations that are sufficient for achieving high resilience and four configurations associated with low resilience, highlighting the nuanced interplay between resources, costs, and adaptability. Specifically, flexibility, response, recovery, benevolence, and commitment must need conditions for achieving organizational resilience in NCA analysis. In fsQCA analysis, flexibility and commitment are core conditions, whereas response and information sharing are peripheral conditions for achieving high organizational resilience. This study strengthens resilient strategies by demonstrating the supplementary contributions of RBV and TCE. This combination offers policymakers actionable insights to develop resilient strategies that enhance organizational adaptability and performance in turbulent times.

Open Access: Yes

DOI: 10.1016/j.sftr.2025.101327

Dynamic Capabilities and Technological Innovation for Firm Resilience: A Configurational Analysis

Publication Name: Emerging Science Journal

Publication Date: 2025-10-01

Volume: 9

Issue: 5

Page Range: 2292-2317

Description:

Firm resilience is essential to manage response and rapid recovery from disruptive events for a firm. Moreover, there is limited literature that investigates the combined effects of dynamic capability and technological innovation that are interrelated with firm resilience. This study used the dimensions of firm resilience, which were investigated with both necessary condition analysis (NCA) and fuzzy-set Qualitative Comparative Analysis (fsQCA) methods using survey questionnaires from 308 respondents operating in Bangladeshi corporate industries that are currently facing uncertainties due to unforeseen crises. NCA results showed that visibility, market position, and digitalization achieved firm resilience as these antecedents reached the full percentile to achieve an optimal level of outcome. On the contrary, the influence of reserve capacity and big data analytics was not empirically significant for achieving firm resilience. Moreover, fsQCA results appreciated NCA results and showed four solutions that are sufficient for achieving a high level of firm resilience. The study reveals the configurational effects of dynamic capabilities and technological innovation to achieve firm resilience. The results show the necessary effects of configurational relationships that lead to outcomes. The configurational method is applied to identify the combined effects of antecedents that help managers predict high levels of firm resilience in a turbulent environment.

Open Access: Yes

DOI: 10.28991/ESJ-2025-09-05-01

Configuring Green Growth in the Age of Sustainability: Energy and Resource Use Trends in EU Economies

Publication Name: Sustainable Development

Publication Date: 2026-01-01

Volume: Unknown

Issue: Unknown

Page Range: Unknown

Description:

In an era of intensifying global competition where nations aggressively pursue economic advancement, the imperative to balance progress with ecological preservation has become paramount. However, the race for advancement should not harm nature or future generations. Our study investigates the drivers that can lead to green growth, aligning with sustainable development principles that integrate economic growth, environmental stewardship, and social equity as per the UN's Sustainable Development Goals (SDGs), across nine Western European countries from 2010 to 2019. By utilizing panel data from reputable sources, this research investigates the influence of globalization, natural resource rents, renewable energy consumption, trade openness, and total energy consumption on green growth. Employing contemporary panel diagnostic tests, cointegration analyses, and fixed- and random-effects models, the study also validates its findings through quantile regression, fully modified ordinary least squares, and dynamic ordinary least squares. Our study has fulfilled its destiny by finding the right drivers. According to various analyses, globalization and trade openness consistently and significantly promote green growth, confirming their potential as reliable mechanisms for achieving green growth. The complex impact of renewable energy consumption and natural resource rents opens a new door for exploration by revealing the transitional barriers, such as initial costs and policy lags, in contrast to maintaining the resource rent tendency. However, the beneficial impact of total energy consumption of carbon and fossil fuel underscores the urgency of effective resource utilization and a shift toward renewable sources to decouple growth from unsustainable consumption before running out.

Open Access: Yes

DOI: 10.1002/sd.70627

Innovation Pathways to Carbon Efficiency: Disentangling the Effects of AI, R&D, and Clean Energy Blessings on U.S. Environmental Sustainability

Publication Name: Business Strategy and the Environment

Publication Date: 2026-01-01

Volume: Unknown

Issue: Unknown

Page Range: Unknown

Description:

The United States (U.S.) faces challenges in achieving its ambitious net-zero carbon emissions target by 2050, with current emissions having fallen by less than 1% in 2024. Despite an investment of $500 billion in low-carbon resources while holding the second-largest green technology patent portfolio globally, it is further imperative to investigate ongoing innovations for suboptimal resource allocation and policy misalignment between investment strategies and environmental effectiveness. In this study, we examine the comparative impacts of artificial intelligence (AI) innovation, research and development (R&D) investment, government intervention, natural resource rents, and renewable energy consumption on U.S. environmental sustainability (ECOI) spanning 1990–2022. We bridge the gap in prior literature with respect to understanding which pathways of innovation lead to the highest carbon efficiency returns per dollar invested, moving beyond aggregate investment analysis toward identifying the optimal policy sequencing and resource allocation strategies. We implemented a comprehensive time series econometric framework, including autoregressive distributed lag bounds testing, the vector error correction model, and Granger causality analysis on 33 years of national-level data. Our findings suggest that R&D investment results in the greatest improvement in long-term carbon intensity, followed by AI patents and renewable energy usage. Government intervention has significant negative long-term effects despite positive short-term impacts, which may indicate potential crowding-out effects. Natural resource dependency has positive long-term benefits with negative short-term impacts, suggesting opportunities for strategic extraction. The error correction mechanism implies a moderate adjustment speed toward equilibrium, whereas impulse response functions (IRFs) reveal that AI innovations establish rapid environmental benefits peaking in the second period. These results provide crucial evidence for federal climate investment prioritization by suggesting that taking funds away from direct government spending and putting them into AI-integrated R&D initiatives could maximize carbon reduction outcomes and accelerate progress toward net-zero targets.

Open Access: Yes

DOI: 10.1002/bse.70748