Optimizing fertilization and crop management for triticale in the Lăpuș depression, Romania

Publications, UC1 — Crop Yield & Land Bonitation

Optimizing fertilization and crop management for triticale in the Lăpuș depression, Romania

Optimizing fertilization and crop management for triticale in the Lăpuș depression, Romania
I. Cionca, A. D. Costin, T. Rusu

Abstract. Triticale is an important cereal crop in mountainous and hilly areas of Romania, where soil and climatic conditions can limit the yields of traditional cereals. This paper presents an experimental study on the optimization of fertilization and crop management for triticale in the Lăpuș depression. Different fertilization schemes (mineral, organic and combined) are tested in combination with various technological options, in order to identify the most effective practices for the local agroecological context. Results show that integrated fertilization, adjusted to soil supply and climatic conditions, leads to significant improvements in yield, grain quality and economic efficiency, while supporting sustainable land use in the region.

Keywords: triticale; fertilization; crop management; Lăpuș depression; sustainable agriculture

📋 Cite this publication



I. Cionca, A. D. Costin, T. Rusu, "Optimizing fertilization and crop management for triticale in the Lăpuș depression, Romania", AgroLife Scientific Journal, vol. 14, no. 2, 2024, 2023. DOI: https://doi.org/10.17930/AGL202426.


Reference: AgroLife Scientific Journal, vol. 14, no. 2, 2024. DOI: 10.17930/AGL202426

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