Model Edukasi Mitigasi Bencana Berbasis Komunitas dalam Kerangka Community-Based Disaster Risk Reduction untuk Meningkatkan Kesiapsiagaan Sosial

Authors

DOI:

https://doi.org/10.63982/dharmabakti.ndgyfy90

Keywords:

Edukasi mitigasi, Kesiapsiagaan sosial, Mitigasi bencana, Partisipasi komunitas, Pengurangan risiko

Abstract

Peningkatan frekuensi dan intensitas bencana alam telah menjadikan risiko bencana sebagai ancaman struktural terhadap keberlanjutan kehidupan sosial, terutama pada masyarakat pedesaan yang memiliki keterbatasan kapasitas respons. Berbagai upaya mitigasi masih didominasi pendekatan top-down dan teknis, sehingga kesiapsiagaan sosial masyarakat belum berkembang secara optimal. Kegiatan pengabdian ini bertujuan meningkatkan kesiapsiagaan sosial masyarakat desa rawan risiko melalui pengembangan dan penerapan edukasi mitigasi bencana berbasis komunitas dengan pendekatan simulasi dan skenario lokal yang partisipatif. Metode yang digunakan adalah mixed methods dengan desain sequential explanatory, meliputi tahap asesmen kebutuhan komunitas, perancangan bersama model edukasi, implementasi pelatihan dan simulasi bencana, serta evaluasi dampak melalui pengukuran pra–pasca dan observasi partisipatif. Hasil menunjukkan bahwa program ini secara konsisten meningkatkan kesiapsiagaan sosial masyarakat, tidak hanya pada pemahaman risiko, tetapi juga pada perubahan perilaku kolektif, koordinasi komunitas, dan respons operasional dalam simulasi bencana. Temuan kualitatif mengungkap bahwa partisipasi aktif, pembelajaran berbasis pengalaman, dan dukungan kelembagaan desa berperan penting dalam mengintegrasikan praktik kesiapsiagaan ke dalam aktivitas keseharian. Secara keseluruhan, kegiatan ini berdampak pada penguatan kapasitas sosial masyarakat dan pengurangan ketergantungan pada respons eksternal. Program ini terbukti efektif, berpotensi direplikasi pada konteks desa rawan risiko lainnya, serta memberikan implikasi penting bagi pengembangan kebijakan dan praktik pengurangan risiko bencana berbasis komunitas yang berkelanjutan.

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References

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Published

2026-02-01

How to Cite

Model Edukasi Mitigasi Bencana Berbasis Komunitas dalam Kerangka Community-Based Disaster Risk Reduction untuk Meningkatkan Kesiapsiagaan Sosial. (2026). Jurnal Pengabdian Masyarakat Dan Inovasi Teknologi Tepat Guna, 2(1), 26-36. https://doi.org/10.63982/dharmabakti.ndgyfy90