Perilaku Harian dan Profil Demografi Mempengaruhi Kenaikan Tagihan Listrik Selama Covid-19 di Indonesia: Pendekatan SEM-PLS

Penulis

  • Rosyid Al Hakim Universitas Global Jakarta

DOI:

https://doi.org/10.54259/akua.v1i1.217

Kata Kunci:

Aktivitas, Energi, Pandemi, Partial Least Square, Structural Equation Modeling

Abstrak

Pandemi Covid-19 telah berdampak pada penggunaan energi listrik di rumah tangga. Dilaporkan terjadi perubahan konsumsi energi listrik sebelum dan selama pandemi Covid-19 di beberapa negara. Penelitian ini bertujuan untuk me-review aktivitas perilaku sehari-hari dan profil demografi penduduk di Indonesia terhadap kasus naiknya tagihan listrik selama pandemi Covid-19 melalui pendekatan Structural Equation Modeling-Partial Least Square (SEM-PLS). Metode penelitian menggunakan pendekatan Structural Equation Modeling-Partial Least Square (SEM-PLS). Sebanyak 137 responden yang diasumsi mengalami dampak kenaikan tagihan listrik selama pandemi Covid-19 di Indonesia. Terdapat empat hipotesis yang diajukan dalam studi ini untuk diuji melalui pendekatan SEM-PLS. Sebanyak dua hipotesis diterima dan dua hipotesis ditolak. Hipotesis H1 (phitung < 0.05) sehingga H1 diterima atau terdapat hubungan antara aktivitas perilaku harian terhadap kenaikan tagihan listrik. Hipotesis H3 (phitung < 0.05) sehingga H3 diterima atau terdapat hubungan antara profil responden terhadap kenaikan tagihan listrik. Sedangkan perangkat tambahan yang memerlukan daya listrik dan besar pulsa listrik yang dibeli tidak terdapat hubungan terhadap kenaikan tagihan listrik selama pandemi Covid-19 di Indonesia.

Unduhan

Data unduhan belum tersedia.

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Diterbitkan

2022-01-10

Cara Mengutip

Al Hakim, R. (2022). Perilaku Harian dan Profil Demografi Mempengaruhi Kenaikan Tagihan Listrik Selama Covid-19 di Indonesia: Pendekatan SEM-PLS. AKUA: Jurnal Akuntansi Dan Keuangan, 1(1), 68–76. https://doi.org/10.54259/akua.v1i1.217

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