dorsal/arxiv
View SchemaAdjustment studies in self-consistent relativistic mean-field models
| Authors | T. J. Buervenich, D. G. Madland, P. -G. Reinhard |
|---|---|
| Categories | |
| ArXiv ID | nucl-th/0407036 |
| URL | https://arxiv.org/abs/nucl-th/0407036 |
| DOI | 10.1016/j.nuclphysa.2004.08.017 |
Abstract
We investigate the influence of the adjustment procedure and the set of measured observables on the properties and predictive power of relativistic self-consistent mean-field models for the nuclear ground state. These studies are performed with the point-coupling variant of the relativistic mean-field model. We recommend optimal adjustment algorithms for the general two-part problem and we identify various trends and dependencies as well as deficiencies of current models. Consequences for model improvements are presented.
{
"annotation_id": "30df997a-b141-484c-97d7-98e2c9710fdc",
"date_created": "2026-03-02T18:00:01.364000Z",
"date_modified": "2026-03-02T18:00:01.364000Z",
"file_hash": "b356d601a45640591369abdd01a15c31b6da06c2867ce51b9d70560d68cecba4",
"private": false,
"record": {
"abstract": "We investigate the influence of the adjustment procedure and the set of\nmeasured observables on the properties and predictive power of relativistic\nself-consistent mean-field models for the nuclear ground state. These studies\nare performed with the point-coupling variant of the relativistic mean-field\nmodel. We recommend optimal adjustment algorithms for the general two-part\nproblem and we identify various trends and dependencies as well as deficiencies\nof current models. Consequences for model improvements are presented.",
"arxiv_id": "nucl-th/0407036",
"authors": [
"T. J. Buervenich",
"D. G. Madland",
"P. -G. Reinhard"
],
"categories": [
"nucl-th"
],
"doi": "10.1016/j.nuclphysa.2004.08.017",
"title": "Adjustment studies in self-consistent relativistic mean-field models",
"url": "https://arxiv.org/abs/nucl-th/0407036"
},
"schema_id": "dorsal/arxiv",
"source": {
"execution_id": "06a2dfb9-6531-4f1a-bbe3-94868b97613d",
"id": "arXiv Dataset IDs",
"type": "Model",
"variant": "snapshot-2026-03-01",
"version": "0.1.0"
},
"user_id": 1000002
}