环渤海地区通过不同的有机质投入提高作物产量、固碳和温室气体减排:基于 DNDC-RF 框架的估算

IF 5.6 1区 农林科学 Q1 AGRONOMY Field Crops Research Pub Date : 2024-11-06 DOI:10.1016/j.fcr.2024.109624
Naijie Chang , Di Chen , Yurong Cai , Jianzheng Li , Mengxuan Zhang , Hu Li , Ligang Wang
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引用次数: 0

摘要

背景理解作物生长的复杂性及其对温室气体(GHG)排放的影响对于粮食安全和农业抵御气候变化至关重要。研究问题农业生态系统模型在这一过程中发挥着重要作用,但其区域适用性仍然受到限制。方法在我们的研究中,我们在环渤海地区八个具有代表性的地点对 DNDC(脱硝-脱碳)模型进行了严格的验证,并确定了该模型在准确模拟作物产量、土壤有机碳 (SOC) 和一氧化二氮 (N2O) 排放方面的功效。我们开发了一个耦合框架 DNDC-RF(脱硝-脱碳-随机森林),将 RF 算法与 DNDC 在施肥和气候情景下的模拟结果结合使用。通过使用 DNDC-RF,我们定量评估了在未来气候情景下,不同施肥策略对产量和净温室气体(包括 SOC 和 N2O 排放)的影响,时间跨度从 2008 年到 2100 年。结果 DNDC-RF 框架准确预测了 SOC、产量和 N2O,具有较高的 R2 和 LCCC,较低的 RMSE 和 MAE。在 RCP4.5 情景下,常规施肥措施会导致春玉米减产。然而,有机物的投入可以实现增产,特别是额外的粪肥投入(9.6 千克碳/公顷-年-1)。预计在未来气候变化条件下,夏玉米产量将增加,在 RCP8.5 情景下,增加粪肥投入(26 千克碳/公顷-年-1),夏玉米产量增加最快。小麦产量在未来气候变化下也会增加,在 RCP8.5 条件下,秸秆还田的增长率最高(17.1 千克碳/公顷-年-1)。在不同施肥方法下,春玉米田表现出净温室气体汇。在 RCP4.5 和 RCP8.5 条件下,增加粪肥投入和秸秆还田的效果最好。与此相反,在 RCP4.5 和 RCP8.5 条件下,冬小麦-夏玉米田的常规施肥导致温室气体净源。结论DNDC-RF 框架能快速有效地解决 DNDC 模型在区域尺度预测中的困难(如参数设置复杂、难以在区域尺度和时间序列上准确快速模拟),并能准确模拟区域作物产量、SOC 变化和 N2O 排放。我们的研究结果对促进区域农业可持续发展和制定有效的区域农业管理措施具有重要的科学意义和实用价值。
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Enhancing crop yield and carbon sequestration and greenhouse gas emission mitigation through different organic matter input in the Bohai Rim region: An estimation based on the DNDC-RF framework

Context

Comprehending the intricacies of crop growth and its impact on greenhouse gas (GHG) emissions is crucial for food security and agricultural resilience to climate change.

Research question

Agroecosystem models are instrumental in this endeavor, yet their regional applicability remains constrained.

Methods

In our study, we conducted a rigorous verification of the DNDC (DeNitrification-DeComposition) model across eight representative sites in the Bohai Rim region and determined its efficacy in accurately simulating crop yield, soil organic carbon (SOC), and nitrous oxide (N2O) emissions. We developed a coupled framework, DNDC-RF (DeNitrification-DeComposition-Random Forest), using the RF algorithm in conjunction with DNDC simulation results across fertilization and climate scenarios. Employing the DNDC-RF, we quantitatively evaluated the impact of diverse fertilization strategies on yield and net GHG (including SOC and N2O emissions) under future climate scenarios, spanning the period from 2008 to 2100.

Results

The DNDC-RF framework accurately predicts SOC, yield, and N2O with high R2 and LCCC, lower RMSE and MAE. Under the RCP4.5 scenario, spring maize yields exhibited a reduction under conventional fertilization measures. However, with organic matters input could achieve the yield increase, particularly additional manure input (9.6 kg C ha−1 yr−1). Summer maize yields were projected to increase under future climate change, with the fastest increase occurring under the RCP8.5 scenario with additional manure input (26 kg C ha−1 yr−1). Wheat yields also increased under future climate change, with the highest growth rate observed with straw return under the RCP8.5 (17.1 kg C ha−1 yr−1). Under different fertilization practices, spring maize fields exhibited a net GHG sink. The best performance was observed with additional manure input and straw return under RCP4.5 and RCP8.5, respectively. In contrast, conventional fertilization in winter wheat-summer maize fields resulted in a net GHG source under both RCP4.5 and RCP8.5. However, the application of organic matter mitigated the net GHG emissions, with additional manure input resulting in the largest increase rate of the net GHG sink.

Conclusions

DNDC-RF framework can quickly and effectively solve the difficulties of DNDC model in regional scale prediction (such as complex parameter setting, difficult to accurately and quickly simulate at regional scale and time series), and can accurately simulate regional crop yield, SOC change and N2O emission. With the input of organic matter, the projected yields of maize and wheat are expected to increase, and the field’s ability to act as a net GHG sink could be enhanced.

Significance

Our findings have important scientific significance and practical value for promoting the sustainable development of regional agriculture and formulating effective regional agricultural management measures.
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来源期刊
Field Crops Research
Field Crops Research 农林科学-农艺学
CiteScore
9.60
自引率
12.10%
发文量
307
审稿时长
46 days
期刊介绍: Field Crops Research is an international journal publishing scientific articles on: √ experimental and modelling research at field, farm and landscape levels on temperate and tropical crops and cropping systems, with a focus on crop ecology and physiology, agronomy, and plant genetics and breeding.
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