Heterogeneous global crop yield response to biochar: a meta-regression analysis

A. Crane-Droesch, S. Abiven, S.L. Jeffery, M.S. Torn

Research output: Contribution to journalArticleAcademicpeer-review

230 Citations (Scopus)


Biochar may contribute to climate change mitigation at negative cost by sequestering photosynthetically fixed carbon in soil while increasing crop yields. The magnitude of biochar's potential in this regard will depend on crop yield benefits, which have not been well-characterized across different soils and biochars. Using data from 84 studies, we employ meta-analytical, missing data, and semiparametric statistical methods to explain heterogeneity in crop yield responses across different soils, biochars, and agricultural management factors, and then estimate potential changes in yield across different soil environments globally. We find that soil cation exchange capacity and organic carbon were strong predictors of yield response, with low cation exchange and low carbon associated with positive response. We also find that yield response increases over time since initial application, compared to non-biochar controls. High reported soil clay content and low soil pH were weaker predictors of higher yield response. No biochar parameters in our dataset-biochar pH, percentage carbon content, or temperature of pyrolysis-were significant predictors of yield impacts. Projecting our fitted model onto a global soil database, we find the largest potential increases in areas with highly weathered soils, such as those characterizing much of the humid tropics. Richer soils characterizing much of the world's important agricultural areas appear to be less likely to benefit from biochar.
Original languageEnglish
Article number044049
JournalEnvironmental Research Letters
Issue number4
Publication statusPublished - 2013


  • black carbon
  • soil fertility
  • metaanalysis
  • charcoal
  • ecology
  • model
  • scale


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